vol : 42 july – december, 2019 no : 2...vol : 42 july – december, 2019 no : 2 content research...
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Vol : 42 July – December, 2019 No : 2Content
Research Papers
★ Telecommunications Infrastructure and Economic Growth in India
Mohina Saxena & Surajit Bhattacharyya ............................................ 1
★ Efficiency, Productivity and Returns to Scale of Indian General
Insurance Industry : Evidence Based on Panel Data
Ram Pratap Sinha .............................................................................. 23
★ Impact of Privatisation on the Performance of the Divested Firms :
Appraisal of Empirical Studies
Jugal Kishore Mohapatra .................................................................. 48
★ Corporate Governance Practices and its Impact on Non-Performing
Assets of Selected Commercial Banks in India
S.K.Chaudhury & Devi Prasad Misra ............................................... 78
★ Persistence in Performance of Indian Mutual Fund Schemes :
An Evaluation
Joyjit Dhar & Kumarjit Mandal ........................................................ 92
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Telecommunications Infrastructure and Economic Growth in India
1
Telecommunications Infrastructure andEconomic Growth in India
Mohina Saxena* & Surajit Bhattacharyya**
This paper attempts to analyze whether there has been any causal relationship betweentelecommunications infrastructure and economic growth in India over more than threedecades [1981-2018]; and identify whether such a causal relationship has beenunidirectional or bidirectional in nature. We use the Johansen and Juselius (1990) testfollowed by the Granger (1969) causality test between output and telecommunicationsinfrastructure. A multivariate VAR is also performed by considering other variables namely,domestic investment, trade volume and real effective exchange rate. There has been no longrun relationship between telecommunications infrastructure and economic growth in India;short run unidirectional causality emanating from output growth to telecommunicationsinfrastructure is observed. Interestingly, domestic investment does not Granger cause economicgrowth even in the short-run; however, there is unidirectional causality from REER todomestic investment and aggregate output. Short-run bidirectional causality between economicgrowth and volume of trade hints at a feedback effect.
Keywords : Telecom Infrastructure, Real GDP Growth, Granger Causality, Cointegration,Multivariate VAR.
1. IntroductionThere are at least three channels throughwhich development in telecom sectorfacilitates the economy; firstly, telecom-munications infrastructure has thepotential to increase efficiency in deli-vering the necessary social services alongwith increasing the level of productivity.This is because with the developmentin modern (communication) technologies,the cost of doing business drops thataccelerates the consequent economicoutput. Secondly, in the backdrop ofupsurge in number of call centers,BPOs as well as KPOs and software
The Journal of Institute of Public Enterprise, July-Dec, Vol. 42, No. 2ISSN : 0971-1864, © 2019.
* Mohina Saxena, Research Scholar, Departmentof Humanities & Social Sciences, IIT Bombay,Mumbai - 400 076.
** Surajit Bhattacharyya, Associate Professor ofEconomics, Department of Humanities & SocialSciences, IIT Bombay, Mumbai - 400 076.
companies particularly in the lastdecade and half, it is evident thatdevelopment in the telecom sector hasprovided significant employmentopportunities in India. And lastly, pene-tration of telecom services has facili-tated societies that were remotely loca-ted and women in particular, to reapeconomic benefits by increasing theirincomes significantly. A notable
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example is of the fishermen in the westcoast of India who regularly use cellphones to get information regardingmarket prices so as to decide the mostprofitable destination for selling offtheir stocks. This not only helps inreducing income volatility but on theother hand, contributes to the empower-ment aspect of Sustainable Develop-ment Goals (SDGs). Thus, in pursuitof achieving these goals, Indian tele-communications industry has not onlythrived to become one of the fastestgrowing in the world, it is in fact,ranked as the second largest in the worldas of March, 2018.
From another perspective, it has beenan undeniable argument that thegovernment’s ability to deliver varioussocial service schemes as well as copingwith the civil emergencies in an efficientway rests primarily on the efficacy ofthe telecommunications sector. Citizensnot only become more aware but canalso easily access as well as raise con-cerns regarding the implementation ofgovernment’s welfare programmes andactivities through a smooth well-func-tioning communication set up. Thus,the democratic essence of the nationstate is largely protected by develop-ments in the telecommunications sec-tor as it helps in building an informedsociety. Also, with regards to the impacton education, the development ofmodern communication technologies
has enabled a significant reach throughthe distance learning programmes thathave helped a larger section of the societywhich had been excluded earlier due toseveral supply-side bottlenecks. In fact,with the advent of internet, it is of nosurprise to witness the much-neededexistence of a full-fledged virtual com-munity, electronic market place andknowledge centres that have broughtwith itself rise in economic output. Inthis sense, an advanced telecommuni-cations infrastructure such as mobilephones and internet is pivotal not onlyfor generating economic gains but alsofor societal upliftment. In fact, in thebackdrop of India’s commitment toachieve the Sustainable DevelopmentGoals, it has been argued that deve-lopment of telecommunicationsinfrastructure leads India’s way tosucceed in achieving that target throughits multi-fold beneficial effects on theeconomy at large.1
The importance of infrastructure toeconomic growth was initially broughtout by the World Bank DevelopmentReport (1994) which highlighted thatgrowth as well as productivity is higherin countries that have an adequateand efficient supply of infrastructureservices. The India InfrastructureReport (1996) expressed a similar viewtowards the importance of infra-structure. Even, if we look back intothe last decade, in the 11th five year plan
Telecommunications Infrastructure and Economic Growth in India
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Government of India (GoI) emphasizedthe urgent need for removing infrastruc-ture bottlenecks for sustained growth;[Economic Survey (2011-12)]. Subse-quently, in the 12th five year plan thegovernment had laid special emphasison the infrastructure sector and recog-nized that the availability of qualityinfrastructure is important not only forsustaining high growth but also toensure that the growth is inclusive;[Economic Survey (2012-13)]. Duringthe last quarter of the 20th century,infrastructure developments in Infor-mation and Communication Technolo-gies (ICT) were widely seen as havingheralded an information age in whicheconomic (and social) activity has beenmore productive, efficient, widenedand deepened to the grassroots level.Over the years ICT development hasbeen increasingly identified as the onethat has a strong association with over-all economic activities at a large scaleand it is the fast-paced advancement intelecom infrastructure that has theability to create spillover effectsthrough network externalities.
Our study explores the inter-linkagebetween available physical infrastructureand growth prospects of the Indianeconomy by especially focusing on thedevelopments in telecom sector infra-structure. Apart from other reasons thatmake the Indian telecom sector beingso important of late, it is by now well
argued in the policy-oriented literaturethat development in ICT is crucial toachieve the desired growth trajectoryfor the fast-growing developingeconomy of India.
According to the Network ReadinessIndex (2015) published by the WorldEconomic Forum, most of the deve-loping countries continue to lag in com-parison with the developed (industria-lized) countries in terms of physicalinfrastructure and preparation to parti-cipate and enjoy the benefits from ICTdevelopment. India has been relativelya late starter when it comes to identify-ing and developing state-of-the-art pub-lic infrastructure.Thus, telecommuni-cations infrastructure becomes increas-ingly relevant in today’s parlance whenthe policy makers and the academicsare debating on the plausible effects ofdigital divide in a vast (as well as fast)growing emerging economy like India.
The planning strategies and policyinitiatives induced by successive centralgovernments were matched with fastpaced positive response from the privatesector and that resulted in such a phe-nomenal progress which perhaps por-trays the biggest success story of India’sreforms; Panagariya (2013). In spite ofbeing plagued by so many challengessuch as infrastructure bottlenecks,relatively slower penetration in ruralareas and lack of skilled manpower in
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telecom equipment manufacturingactivities, the growth story of Indiantelecommunications sector has remainedencouraging even in the scenario of fluc-tuations in other core sectors of theeconomy. The cost saving externalitiesgenerated due to the increasing returnsof communications foster the expan-sion of other markets and leads to lowertransaction costs. It is therefore, impera-tive to explore whether a fast-growingemerging economy like India had bene-fitted from the large scale FDI inflowsand massive investments made in thetelecommunications sector that alsohouse the highest level of employmentopportunities in the private sector ofthe economy.
Section-2 presents significance oftelecom sector in India’s growth his-tory. Section-3 discusses the empiricalliterature establishing the inter-linkagebetween telecommunications infra-structure and economic growth. InSection-4, we explain the empiricalframework followed by construction ofvariables in Section-4.1 and estimationresults in Section-4.2. Finally, Section-5concludes this paper along with someplausible policy implications.
2. The Indian Telecom SectorIndia has the second largest telecommu-nications network in the world withsubscriber base of over 1,200 millionas of March, 2018 [TRAI (2018)].
Since the last decade there has been anexponential growth in the Indian tele-communications sector especially in thecellular technology with the total num-ber of mobile phone subscribers grow-ing almost three hundred times in justten years from 3 million in 2001 to811.59 million in 2011 [TRAI (2011)].Apart from contributing around 2-3 percent of India’s GDP, in the last one anda half decade the telecommunicationssector has grown at the compoundedannual growth rate of 22 per centduring 2000-18 in terms of its totalsubscriber base. In fact, just on the eveof launching the New Telecom Policy2012 (NTP-2012), the Indian tele-communications sector had grown atthe highest compounded annualgrowth rate of 44 per cent during 2006-2007 to 2011-2012 [MoSPI, (2014)].
The reforms in telecommunicationssector infused competition and led tothe adoption of new technologieswhich proved to outweigh any benefitsthat scale economies may bestow;Panagariya (ibid.). A glimpse at themagnitude of success achieved throughthe reforms process is reflected throughthe following facts. As on March 31,1981, India had only 2.15 million tele-phone users. While alone in 2015,India added over 10 million telephonesin each quarter. The wireless densityhad increased exponentially from 0.3per cent in 1999-2000 to 91.09 per cent
Telecommunications Infrastructure and Economic Growth in India
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in 2017-18; see TRAI, Annual Reports(various issues). Similarly, Figure-2 dis-plays the addition in number of tele-phone lines for each of the ten-yearperiod since 1981-82. The wirelesslocal call tariff has reduced from 16.40per minute in 1990 to 1 per minutein early 2000. The internet policyannounced in 1998 ended the monopolyof VSNL and allowed the entry of pri-vate operators to induce competitionwithout any significant licence fees. Theenunciation of this policy has led to asignificant increase in the number ofinternet subscribers from less than 1million in 2000-01 to 493.96 millionin 2017-18; (see Figure-3).
The telecommunications sector revenuehad gone up from 125.18 billionduring 1995-96 to 2556 billion in2016-17; see Table-1. The Indian IT
industry has evolved as the largestprivate sector employer with more than3.5 million employees as of March,2015. FDI in the telecom sector hasgrown at a compounded annual growthrate of 24.8 per cent between 2000-01and 2011-12. In the last decade andhalf, the cumulative FDI inflow in tele-communications sector constitutedaround 7 per cent of total FDI inflows;(Department of Industrial Policy andPromotion, 2017).
2.1 Challenges in the IndianTelecom Sector
The subscriber base for telecom servicesis highly skewed in favour of urban areas.The significant “digital divide” withfaster growth rate of urban subscribersas compared to the rural subscribersreflects that there are relatively lesser
Figure-1 : Teledensity in India (1981-2018)
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Figure-2 : Number of Telephone Connections Added
Data Source : Telecom Regulatory Authority of India, Annual Report (various issues).
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Number of Mobile Connections Added
Number of Fixed Line Connections Added
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Figure-3 : Number of Internet Users in India
Data Source : The World Bank, World Development Indicators.
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Telecommunications Infrastructure and Economic Growth in India
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Table-1 : Contribution of Telecommunications Sector to GDP
Year
Telecom Sector Revenue Contribution to Total Government Levies(in Billions) GDP (%) (in Billions)
2004-05 720 2.2 104
2005-06 860 2.3 129
2006-07 1050 2.4 193
2007-08 1440 2.9 255
2008-09 1520 2.7 250
2009-10 1580 2.4 278
2010-11 1720 2.2 261
2011-12 1950 2.2 262
2012-13 2120 2.1 291
2013-14 2330 2.2 312
2014-15 2606 2.1 222
2015-16 2795 2 235
2016-17 2556 1.66 180
Data Source : TRAI, The Indian Telecom Services Performance Indicators, (various issues).
Year FDI Inflow (in Millions)
2001-02 39,384.61
2002-03 9,077.31
2003-04 3,978.40
2004-05 5,411.01
2005-06 27,514.50
2006-07 21,495.77
2007-08 50,995.61
2008-09 1,16,848.11
2009-10 1,22,696.62
Table-2 : FDI Inflow in the Indian Telecom Sector
Year FDI Inflow (in Millions)
2010-11 75,420.44
2011-12 90,115.26
2012-13 16,540.04
2013-14 79,872.83
2014-15 173,718.22
2015-16 86,370
2016-17 374,350
2017-18 397,480
Data Source : Department for Promotion of Industry and Internal Trade, Government of India.
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beneficial effects of competition for therural population. The gap between urbanand rural teledensity was as high as 13times in 1996, it kept rising and reachedits peak in 2006 (20 times) after whichit started declining and currently theurban teledensity is around 3 timesmore than the rural teledensity. Perti-nent in today’s debate over reducing theso-called ‘digital divide’, it is argued infavour of identifying telecommunica-tions as ‘merit goods’ that universalaccess to telecommunication servicescan significantly reduce social andeconomic exclusion and offer increasedopportunities to the people at large.
The manufacturing of telecomequipment due to increased demand ofmobile phones is increasing steadily but
still lags behind the telecom services.In fact, the revenue of telecom manu-facturing sector is significantly smallerthan the services sector and has actuallydeclined since 2009-10. Also, the tele-com manufacturing sector is plaguedby poor research and development;NCAER (2012). The liberal tradepolicy has fostered imports of equip-ments but the lack of capacity buildinghas the potential to challenge thesuccess of this industry. This reducescost competitiveness of domesticindustry and exposes it to disadvantage.
3. Review of Select LiteratureThe expansion of telecommunicationssector has direct and indirect effects : itdirectly affects growth through newemployment opportunities, diffusion
Figure-4 : Post-Reforms Digital Divide in India
Data Source : TRAI, The Indian Telecom Services Performance Indicators, (various issues).
200180160140120100
80604020
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Telecommunications Infrastructure and Economic Growth in India
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of information and knowledge,increased investment as well as demand;and has indirect effects through increasedproductivity, enhanced efficient func-tioning of the markets by reaping thebenefits from network externalities,among others; Thompson Jr. andGarbacz (2007).
One strand of literature using regressionanalysis depicts that telecommunica-tions infrastructure has a positive andsignificant impact on economic growth;see, Hardy (1980) and Norton (1992),among others. In the Indian context,Kathuria et al. (2009) find that Indianstates with higher mobile penetrationcan be expected to grow faster.
Another set of empirical studies exam-ine the relationship between telecom-munications infrastructure and growththrough Granger-causality test usingVAR framework and argue that tele-communications infrastructure is a pre-condition for economic growth; see,Dutta (2001), Cieslik and Kaniewsk(2004), among others. On the otherhand, Beil et al. (2005) and Chakrabortyand Nandi (2011) suggest that eco-nomic growth precedes telecommuni-cations infrastructure; i.e., telecommu-nications infrastructure is only a resultantoutcome of economic growth that hasalready taken place. This propositionasserts that a growing economydemands better telecommunications
infrastructure and hence, growth in tele-communications infrastructure takeplace. There is another notion thatclaims the existence of ‘feedback effect’between telecommunications infra-structure and economic growth;Cronin et al. (1991), Yoo andKwak (2004). This implies that thegrowth of any one of them fosters thedevelopment of other.
There are only a very few studies thathave actually considered Indian data andexplored the inter-linkage betweentelecommunications infrastructure, inparticular and economic growth.Narayana (2011) estimated the impactof telecom services on economicgrowth and argued that the contribu-tion of telecom services to GDP growthhas increased phenomenally in the postmobile phone era. The study also ana-lyzed the determinants of demand fortelecommunications infrastructure andfound that all the explanatory variables(access price, usage price, monthlyincome, education, caste, and location)were statistically significant at 1 per centlevel of statistical significance.
Ghosh and Prasad (2012) examined thenexus between telephone connectionsand economic activity in India duringthe period 1980-2007. The studyincluded real gross fixed capital forma-tion as a measure of investment and realGDP as a proxy for economic growth.
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The ARDL bound test and Johansen andJuselius (1990) Maximum LikelihoodTest indicated that there was nocointegration among telephone connec-tions, real investment and real GDP.However, the Granger causality testfound the presence of short rununidirectional causality running fromtelecom infrastructure to economicgrowth and to investment.
Therefore, there exists inconsistencyacross literature regarding the directionof causality between telecommunica-tions infrastructure and economicgrowth. This can be attributed to diffe-rent data periods, varied econometricmodelling techniques and state of theeconomy considered in those studies.
4. Empirical AnalysisGiven the extant inconclusive empiricalevidences available, we aim to explorewhether the development in telecom-munications infrastructure has been astimulus to India’s growth story or hasit been merely a consequence ofgrowth, if not both.
Our study differs from Ghosh andPrasad (2012) as well as Mehta (2017)on the count that, this study is perhapsthe first attempt that encompasses alonger data period [1981-2018] thanany other research work with specificreference to the case of India. Ashighlighted earlier, in the decade of
1980s India’s teledensity was abysmallylow; slowly it started accelerating sincethe eve of liberalization and had risensteeply from 2005 onwards. Figure-5shows that during early 1980s to early1990s although there were instances ofhikes in real GDP growth rate but thosesharp hikes were not accompanied byany noteworthy increase in telecommu-nications infrastructure. Given theabsolutely low level of telecom userson the eve of economic reforms to evenlate 1990s, it seems that the occasionalhikes in the growth rate (e.g., in theyears 1983-84, 1988-89, and 1995-96)perhaps cannot be accrued to the deve-lopment in telecommunications infra-structure in particular. In fact, it is arguedthat the impact of telecom infrastruc-ture on a country’s growth rate essen-tially requires a critical mass of usersbefore any significant impact is felt;see, Röller and Waverman (2001).
The data period of Ghosh and Prasad(ibid.) ended at 2007, but the latestphase of telecom sector reforms beganin 2007 itself. This latest phase of reformsbrought in the removal of bindingrestrictions on the number of playerswithin a mobile circle, and 122 new2G licenses were given to various telecomcompanies on a first-come first-servedbasis in January 2008. The auction of 3Gspectrum was held in 2010 and mobilenumber portability was introduced in2011. Certainly, all of these initiatives
Telecommunications Infrastructure and Economic Growth in India
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enabled the subscribers to execute awider choice and the facility to switchbetween different service providers. Inessence, such policy reforms enhancedthe level of competition among theoperators to retain their customers.Because increased demand for telecomusage induced the government as wellas the private players to boost up infra-structure facilities. Mehta (2017) on theother hand have focused only on thedata period 2007-2015. But we feelthat given the irreversible lumpy invest-ment required for building up some ofthe physical infrastructures, there has tobe long run dynamism in such infra-structure building activities. Therefore,
it is of significant importance to haveconsidered the available data till 2018since it becomes pertinent to examinethe impact (if any) of increasedeconomic growth on the developmentof telecommunications infrastructurein India.
Secondly, our study incorporates othermacroeconomic variables namely, totaltrade volume and real effective exchangerate that are either not included ordifferent from other studies on Indiantelecommunications sector.
We conceptualize the basic empiricalobjective of our study as per thefollowing diagrammatic representation.
Figure-5 : Telecom Infrastructure and Growth Rate
Data Source : TRAI Annual Reports and Handbook of Statistics on Indian Economy, RBI.
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4.1 Data and Variables Description
We consider time series data from varioussources; i.e., TRAI Annual Reports,Handbook of Statistics on Indian Economyprovided by the RBI and World Bank.Annual data is considered for the Indianeconomy as a whole and we go back to1981 till recent past (2018) to assessthe possible causality between telecom-munications infrastructure built up andthe apparently successful growthstory of India. Given the (secondary)data availability, our data period there-fore, captures arguably the earliest phaseof conceptualization of reforms thatwere planned during those early yearsof 1980s. Economic growth is proxiedby considering the level of real GDPin a particular year. On the other hand,we measure the telecom infrastructureby adding up the total number of fixedline users, number of mobile phone usersand number of internet users. Along the
lines, this study extends from testing onlythe bivariate causality to incorporate threeother macroeconomic variables, namely,gross fixed capital formation (GFCF),total trade volume (TRD), and real effec-tive exchange rate (REER). Logarithmictransformations of all the variables areconsidered in order to easily convertnon-stationarity series to stationaryseries after taking the first-difference.
4.2 Econometric Methods, Resultsand Discussion
We begin by examining the bivariatecausality between real GDP andtelecom infrastructure; and in the laterpart of the analysis we incorporate someother macroeconomic variables that weconceptualize to have affected the eco-nomic activity of Indian economy overthe past three decades. To begin with,the ‘unit root tests for stationarity’ of thedata series have been conducted.
Increased Capacity to Invest in TelecommunicationsMore Demand for Advanced Telecommunications
Increased and Speedy Flow of Information in the MarketLower Transaction Costs
Higher Level of EconomicActivity
State-of-the-ArtTelecommunications
Infrastructure
→
→
→ →
→
→
Telecommunications Infrastructure and Economic Growth in India
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Unit Root Tests
It is by now oft-told and empiricallywell argued in the extant macro econo-metrics literature that many macroeco-nomic time series are found to containunit root and hence, are non-stationary;see, Nelson and Plosser (1982). There-fore, conventional hypothesis tests can-not be conducted based on the esti-mated coefficients of non-stationaryvariables using the traditional t-test and/or F-test. In fact, the statistical signifi-cance of the concerned test statistic isthen overstated and the results obtained
are a priori spurious; see Granger andNewbold (1974) for details. Thus, itbecomes imperative to first assess thestationarity of the relevant empiricalvariables in order to obtain statisticallymeaningful (and robust) results.
We conduct the two most commonlyused tests for assessing the presence ofunit roots following the seminal con-tributions of Dickey and Fuller (1979,1981) and Phillips and Perron (1988).Dickey and Fuller (ibid.) also extendedthe procedure to an augmented versionof the test which includes extra lagged
Table-3 : Variables and Sources of Data
Gross Domestic Product (GDP) RBI
Gross Fixed Capital Formation (GFCF) RBI
Telecom Infrastructure (TI) TRAI, World Bank
Trade Volume (TRD) RBI
Real Effective Exchange Rate (REER) Bruegel Datasets
Note : All are real variables constructed considering the base year as 2004-05.
Table-4 : Descriptive Statistics
LGDP LTI LTRD LGFCF LREER
Mean 16.94 4.82 10.80 15.66 4.67
Median 16.89 3.67 10.71 15.56 4.63
Max. 18.18 17.62 12.53 17.12 5.14
Min. 15.89 0.77 9.18 14.39 4.33
Std. Dev. 0.69 4.31 1.18 0.87 0.23
Skewness 0.20 1.82 0.08 0.21 0.50
Kurtosis 1.81 5.81 1.59 1.68 2.20
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terms of the dependent variable inorder to eliminate autocorrelation. Thelag length is determined either by theAkaike Information Criterion [AIC](1974) or Schwartz Bayesian Criterion[SBC] (1978). We use the lag lengthwhich minimizes the value of the respec-tive criteria used. On the basis ofobtained Augmented Dickey-Fuller(ADF) statistic, the null hypothesis (thatthe series has a unit root) is accepted forall the data series at their respective levels.However, after first differencing the vari-ables, the respective series become sta-tionary. In both the tests (ADF as wellas Phillips Perron), the unit root testresults are very similar and do not
change qualitatively. Also, there are twoother possible forms of the ADF test :one depicts the presence of a drift andthe second captures the presence of botha drift and non-stochastic trend. We havetested stationarity for both the cases; i.e.,with and without trend in the presenceof an intercept term; see Table-5.
Cointegration Test
Cointegration refers to a stationary linearcombination of non-stationary variables,implying an existence of long runequilibrium relationship among theconcerned economic variables; see forinstance, Enders (2004) and Asteriouand Hall (2007).
Table-5 : Augmented Dickey-Fuller Test Results
Variables Model with Constant Only Model with Constant and Trend
LTI (2) -2.14 -2.87
∆LTI (1) -5.94* -5.82#
LGDP (0) 2.24 -1.45
∆LGDP (0) -4.35* -4.92#
LGFCF (0) 0.68 -1.82
∆ LGFCF(0) -5.34* -5.97#
LTRD (1) 0.79 -2.93
∆ LTRD (1) -4.82* -4.95#
LREER (1) -2.15 -0.54
∆LREER (0) -3.36* -3.82#
Note : ∆ denotes the first-difference. Numbers in parentheses denote lag length using AIC or SBC.* : denotes significant at 5% level when compared with the critical value -2.97 in the first case;
similarly, in the second case# : denotes significant at 5% when compared with the critical value -3.56.
Telecommunications Infrastructure and Economic Growth in India
15
For assessing the causality in case of non-stationary variables the unit rootsshould be removed after differencingappropriately. Therefore, in case of twoI(1) variables the causality test shouldbe done only on the first difference ofboth the variables. However, if thevariables are stationary at first difference,then there is a possibility of cointegration.
Based on the result of the test forcointegration, it is decided which timeseries model is appropriate for estimatingthe causal relationship. If the series arenot cointegrated then an unrestrictedVector Autoregressive (VAR) model isused to assess causality, whereas, in thepresence of cointegration a Vector ErrorCorrection Model (VECM) is usedbecause VAR in first differences is miss-specified since the system omits the‘error correction term’ which is thelagged residual from the estimated longrun relationship; Engle and Granger(1987).
Therefore, in case of non-stationaryvariables it is imperative to assess thepresence of cointegration before estima-ting Granger Causality. In this paper,cointegration is tested using the Johansen
and Juselius (1990) method. Thecointegration test is done after findingout an appropriate lag structure on thebasis of either SBC or AIC. The teststatistics reveal that the null hypothesisof no cointegration cannot be rejectedat 5 per cent level of statistical significance.Therefore, there is no long run relation-ship among the variables; see Table-6.
Granger Causality TestA variable Yt is said to Granger causeXt, if Xt can be predicted with greateraccuracy by using the past history ofthe other variable (Y) in addition to thepast values of X rather than not usingsuch past values; Granger (1969).
Since it is by now established that thereis no long run relationship (cointegration)between the variables hence, the causa-lity is tested through the unrestrictedvector auto-regression framework bytaking the first differences of the varia-bles. Therefore, the unrestricted VARmodel will be as follows :
∆ ∆LTI LTIt i t ii
m
= + +−=∑α α0 11
∆LGDPi t ii
m
t+ +−=∑α ε21
1 ...(1)
Table-6 : Johansen Cointegration Test BetweenTelecom Infrastructure and Real GDP
Test Statistic p-value No. of Cointegrating Equations
Trace 11.13 0.06 0
Maximum Eigenvalue 9.60 0.17 0
The Journal of Institute of Public Enterprise, July-Dec, Vol. 42, No. 2© 2019, Institute of Public Enterprise
16
∆ ∆LGDP LGDPt i t ii
m
= + +−=∑ ∑β β0 11
∆LTIi t ii
m
t+ +−=∑β ε21
2 ...(2)
We find that the optimum lag lengthof the bivariate VAR is one accordingto AIC and SBC. The bivariate Granger-causality test results are reported inTable-7.
It is observed that when ∆LGDP is thedependent variable, ∆LTI turns out tobe statistically insignificant at 5 per centlevel indicating absence of any causa-lity from ∆LTI to ∆LGDP. However,when ∆LTI is dependent variable then,∆LGDP is statistically significant indi-cating a short-run unidirectional causa-lity running from real GDP to telecom-munications infrastructure. This con-firms that economic growth causestelecommunications infrastructure and
is not caused due to it; see, Beil et al.(2005), Chakraborty and Nandi(2011) and Pradhan et al. (2014) forsimilar results.
Table-8 shows that the estimatedunrestricted VAR model satisfies the‘residual test’ with the null hypothesisof normal residuals, no autocorrelationand no heteroskedasticity respectively, atone percent level of significance.
The bivariate analysis might involvespecification bias due to the omission ofsome other relevant variables; therefore,we extend our econometric analysis toa multivariate framework. The follow-ing equation depicts the proposed func-tional relationship between telecom-munications infrastructure, economicgrowth and other macroeconomic vari-ables, such as real gross domestic invest-ment, total volume of trade and realeffective exchange rate.
Table-7 : Granger-Causality Test Results
Null Hypothesis F-Statistic Prob. Decision
∆LTI does not Granger Cause ∆LGDP 0.021 0.87 Accept
∆LGDP does not Granger Cause LTI 4.121 0.05 Reject
Table-8 : Diagnostic Tests Results
Test Statistic p-value Conclusion
JB 10.62 0.04Normality Kurtosis 3.12 0.25 Normal Residuals
Skewness 7.65 0.03
Autocorrelation LM(4) 4.55 0.35 No Autocorrelation
Heteroskedasticity χ2 (15) 25.10 0.06 No Heteroskedasticity
Telecommunications Infrastructure and Economic Growth in India
17
i.e., LTI = f (LGDP, LGFCF, LTRD,LREER)
There might also be reverse causality orbidirectional causality in this empiricalmodel. Since we know that all the varia-bles are I(1), we now verify if there existsany long run relationship or cointegra-tion among them by employing theJohansen and Juselius (ibid.) MaximumLikelihood procedure; see Table-9. Theoptimal order of lags for the VARmodel is again found to be 1 based onboth the AIC and SBC.
Again, we accept the null hypothesis ofno cointegration at 1 per cent level ofsignificance and conclude that there isno long run association among the variables.As earlier, the short run causality istested through the unrestricted vectorauto-regression framework by taking thefirst differences of all the variables (sincethe variables are I(1)); see Table-10.We find that the optimum lag length ofthe multivariate unrestricted VAR is 1according to AIC and SBC.
The unrestricted multivariate VARmodel will be as follows :
∆ ∆LTI LTIt i t ii
m
= + +−=∑α α10 111
∆ ∆LGDP LGFCFi t ii
m
i t i+ +−=
−∑α α121
13 ++=∑i
m
1
++ + +−=
−=
∑ ∑i t ii
m
i t ii
m
tLREER LTRD141
151
1α α ε∆ ∆ ...(3)
∆ ∆LGDP LGDPt i t ii
m
= + +−=∑α α20 211
∆ ∆LTI LGFCFi t ii
m
i t+ +−=
−∑α α221
23 iii
m
+=∑ ∑1
i t ii
m
i t ii
m
tLREER LTRD+ + +−=
−=
∑ ∑241
251
2α α ε∆ ∆ ...(4)
∆ ∆LGFCF LGFCFt i t ii
m
= + +−=∑α α30 311
∆LGDP LTIi t ii
m
i t+ +−=
−∑α α321
33 iii
m
=∑1
i t ii
m
i t ii
m
tLREER LTRD+ + +−=
−=
∑ ∑341
351
3α α ε∆ ∆ ...(5)
∆ ∆LTRD LTRDt i t ii
m
= + +−=∑α α40 411
∆ ∆LGDP LGFCFi t ii
m
i t+ +−=∑α α421
43 −−=
+∑ ii
m
1
−=
−=
+ + +∑ ∑i t ii
m
i t ii
m
tLREER LTI441
451
4α α ε∆ ∆ ...(6)
Table-9 : Johansen Cointegration Test Results
Test Statistic p-value No. of Cointegrating Equations
Trace 76.21 0.02 0
Maximum Eigen value 30.98 0.07 0
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∆ ∆LREER LREERt i t ii
m
= + +−=∑α α50 511
∆ ∆LGDP LGFCi t ii
m
i+ +−=∑α α521
53 FFt ii
m
−=∑1
LTRD LTIi t ii
m
i t ii
m
t−=
−=
+ + +∑ ∑541
551
5α α ε∆ ∆ ...(7)
It can be observed from Table-10 thatwhen ∆LTI is the dependent variablethen ∆LGFCF, ∆LTRD and ∆LREERare statistically insignificant, whereas∆LGDP appears to be statistically signi-ficant at 5 per cent level of significance.In equation (4), both ∆LTI and∆LGFCF are statistically insignificantwhere as ∆LTRD and ∆LREER are sta-tistically significant. The results indicatethat there is no unidirectional causalityrunning from either telecommunicationsinfrastructure or real GFCF to real GDP.In case of real GFCF our results comply,whereas, for the case of telecommuni-cations infrastructure our results contra-dict the findings of Ghosh and Prasad(2012) that concluded the presence ofunidirectional causality running fromtelecommunications infrastructure toeconomic growth.
However, there is presence of short rununidirectional causality emanating fromreal GDP to telecommunications infra-structure. Thus, economic growthcauses the development of telecominfrastructure in India and not the otherway round. Also, in equation (6)
∆LGDP turns out to be statistically sig-nificant indicating presence of bidirec-tional causality between real GDP andtotal trade; see Pradhan et al. (2014)for similar results. In equation (7),∆LTI, ∆LGDP, ∆LTRD and ∆LGFCFare statistically insignificant; indicatingpresence of short run unidirectional cau-sality running from REER to real GDP.Short run unidirectional causality isfound to be running from real GFCFto total trade and from REER to GFCF.The diagnostic test results of estimatedunrestricted VAR model are reported inTable-11.
5. Summing UpA significant section of rural India stillstruggles with social exclusion fromquality health services, secondary andhigher education, housing, water supply,sanitation and overall social security. Itis indeed true that growth without socialjustice is inhuman and social justicewithout adequate growth is inconceivable.The desired benefits of telecom revolu-tion in terms of attaining the SDGs canonly be fruitfully reaped once Indiaprogressively steps toward addressingsuch issues of social exclusions.
Our study addressed the intriguing ques-tion—whether the phenomenal deve-lopment in the Indian telecom infrastruc-ture caused a spur in economic growth;or, is it due to the steady economic growthin India that induced the much-needed
Telecommunications Infrastructure and Economic Growth in India
19
Table-10 : Granger-Causality Test Results
Null Hypothesis F-Statistic Prob. Decision
∆LTI does not Granger Cause ∆LGFCF 0.002 0.95 Accept
∆LGFCF does not Granger Cause ∆LTI 2.082 0.19 Accept
∆LTI does not Granger Cause ∆LGDP 0.019 0.93 Accept
∆LGDP does not Granger Cause ∆LTI 4.095 0.03** Reject
∆LTRD does not Granger Cause ∆LTI 0.172 0.61 Accept
∆LTI does not Granger Cause ∆LTRD 1.875 0.13 Accept
∆LGFCF does not Granger Cause ∆LTRD 5.924 0.02** Reject
∆LTRD does not Granger Cause ∆LGFCF 1.028 0.33 Accept
∆LGDP does not Granger Cause ∆LTRD 4.896 0.02** Reject
∆LTRD does not Granger Cause ∆LGDP 2.934 0.07* Reject
∆LGDP does not Granger Cause ∆LGFCF 1.431 0.20 Accept
∆LGFCF does not Granger Cause ∆LGDP 0.483 0.53 Accept
∆LTI does not Granger Cause ∆LREER 1.295 0.25 Accept
∆LREER does not Granger Cause ∆LTI 6.486 0.65 Accept
∆LGDP does not Granger Cause ∆LREER 2.643 0.15 Accept
∆LREER does not Granger Cause ∆LGDP 4.987 0.03** Reject
∆LGFCF does not Granger Cause ∆LREER 0.891 0.18 Accept
∆LREER does not Granger Cause ∆LGFCF 4.912 0.03** Reject
∆LTRD does not Granger Cause ∆LREER 2.671 0.20 Accept
∆LREER does not Granger Cause ∆LTRD 0.175 0.63 Accept
Note : **and * denote significant at 5% and 10% level respectively.
Table-11 : Diagnostic Test Results
Test Statistic p-value Conclusion
JB 18.83 0.06 Normality Kurtosis 7.86 0.17 Normal Residuals
Skewness 8.65 0.08
Autocorrelation LM (16) 12.89 0.81 No Autocorrelation
Heteroskedasticity χ2 (140) 165.94 0.09 No Heteroskedasticity
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telecom infrastructure to maintainthe growth momentum. Or, is there a‘feedback effect’ ?
We first examined the long run relation-ship through the co-integrationbetween telecom infrastructure and eco-nomic growth in India using annualdata for the period 1981-2018. Ourresults fail to establish any long run rela-tionship between telecom infrastructureand output level. However, we findshort run unidirectional causal relation-ship emanating from economic growthto telecom infrastructure, indicatingthat advancement in telecommunica-tions infrastructure has been a conse-quence of economic growth. Thecointegration results remained un-changed even in the multivariate VARanalysis. Interestingly, the causality resultsremained valid as well. Apart fromthat, we also observe the presence ofshort-run unidirectional causality fromreal (gross) domestic investment totrade volume, from REER to realinvestment as well as to real GDP.
It is often argued that the post-1991structural reforms in the Indian economybrought in a phenomenal growth in theservices sector and the result suggeststhat the recent development of telecominfrastructure has been apparently dueto the growing demand of the flourishingservices sector. Thus, it can be argued
that services led increased economicgrowth had induced the advancementin telecom infrastructure of late.
The absence of long run relationshipcould arise due to heterogeneity of tele-communications penetration betweenrural and urban areas. Such a significant‘digital divide’impedes the developmentof telecom infrastructure in rural areasand hence, constraints the overall effectof telecommunications infrastructureon economic growth. Also, the telecomequipment manufacturing sector ishighly dependent on imported equip-ment and therefore, most of thedomestic demand is met through importsrather than home production. This alsoaffects competitiveness of Indiantelecom products in the internationalmarkets and contributes to decay theimpact of telecommunications infra-structure on economic growth.
Given the spatial unevenness in the ruraland urban telecom infrastructure, eitherthe government has to mitigate theproblem of relatively poor teledensityor adequately incentivize the privateplayers to build up reasonable telecominfrastructure to tap the ‘bottom of thepyramid’ which is large enough for apopulous country like India.
It would have been interesting toexamine the nexus at the state levelusing panel cointegration framework.
Telecommunications Infrastructure and Economic Growth in India
21
Unfortunately, it is difficult to extractdisaggregated data for all the concernedvariables, especially for the telecommu-nications infrastructure. For instance,given the data period of our study wecould not get the FDI data for theentire period and examine whether thereis any inter-linkage between past FDIinflow into the country and improvementin telecom infrastructure.
End Note1. The SDGs are a collection of 17 global
goals set by the UN General Assembly in2015 for the targets to be achieved by2030.
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Efficiency, Productivity and Returns to Scale of Indian General Insurance Industry :Evidence Based on Panel Data
23
Efficiency, Productivity and Returns to Scaleof Indian General Insurance Industry :
Evidence Based on Panel DataRam Pratap Sinha*
The present study compares the efficiency-productivity-returns to scale performance of 15general insurance companies operating in India during the period 2009-10 to 2013-14.We have used a panel data approach towards estimation leading to inter-temporalcomparison of performance in respect of both efficiency and returns to scale. The estimationof efficiency indicates that under the assumption that technology is local, the efficiencyperformance of the insurer’s has improved during the period. However, returns to scaleestimation indicates that most insurance companies were not operating at the optimalscale. Further, estimation of Malmquist productivity index indicates that while efficiencyshifts have been positive during the period under consideration, technical change has beenon the negative side indicating a lowering of the frontier.
Keywords : General Insurance, Window Analysis, Total Factor Productivity, Bootstrap, DEA.
The Journal of Institute of Public Enterprise, July-Dec, Vol. 42, No. 2ISSN : 0971-1864, © 2019.
* Dr.Ram Pratap Sinha, Associate Professor ofEconomics , Government College of Engineeringand Leather Technology, LB Block,Sector III,Salt Lake, Kolkata-700106, India.
IntroductionThe Indian insurance sector experiencedderegulation of entry in the aftermathof the introduction of banking sectorreform in India. The insurance sectorchanges can be considered as an inte-gral part of the overall program offinancial sector reform. Infusion of com-petition through private sector entry inthe insurance sector was essential topromote scale and scope economies inthe sector. From the international pers-pective also, this was quite essential asIndia was committed to the interna-tional community to open up its financialservices sector which, for long,remained a monopoly of the public
sector. Thus, the deregulation of entryin the Indian insurance sector took placein 1999 along with the establishmentof the insurance market regulatornamely the Insurance Regulatory andDevelopment Authority. The changesin the regulatory architecture andcompetition scenario were followed byderegulation of tariffs and many otherimportant policy changes which signifi-cantly influenced the working of thegeneral insurance sector. Against thebackdrop, the present study seeks toestimate efficiency, total factor productivity
The Journal of Institute of Public Enterprise, July-Dec, Vol. 42, No. 2© 2019, Institute of Public Enterprise
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changes and returns to scale for fifteengeneral insurance companies for theperiod 2009-10 to 2013-14.
While adopting the non-parametricmethodology for the estimation ofinsurer performance, we have departedfrom the extant approach used in theIndian context in several respects. In theestimation of efficiency performance ofthe in-sample insurers, we have adoptedthe panel data approach instead of thecross-section approach used in the cur-rent literature. Thus the benchmarkused in our study is based on the entireobservation period. A similar procedurehas been adopted for the estimation ofreturns to scale.
Estimation of efficiency on the basis ofa panel data approach requires theassumption there is no technical changecausing the frontier to shift in between.This is a limitation of the efficiencyanalysis. Thus, in the next phase, wehave also estimated total factor produc-tivity change for the period under obser-vation. While we have followed thepopular non-parametric approach forthe estimation of total factor produc-tivity, we have made a major departurefrom the past. Since the sample size forthe present study is small, we haveresorted to bootstrap DEA estimationof productivity and its components.Apart from giving bias-correctedestimates, this methodology enables us
to provide interval estimates of produc-tivity thereby enabling us to getstatistical interpretation of the scoresincluding interval estimates.
The paper has five sections and proceedsas follows. Section-1 provides an over-view of the post-reform general insu-rance sector. Section-2 describes themethodology. Section-3 describes therelated research work. Section-3 providesa brief overview of the relatedresearch work. Section-4 discusses theresults.Section-5 concludes.
Section-1 : An Overview of theIndian General Insurance IndustryIndian general insurance industry isquite small when compared to theInternational standard. The sector isalso smaller than the life insurancecounterpart. Thus there is considerablescope for the expansion of the sector.
During the period under consideration,the total number of diversified generalinsurers increased from 19 to 21. Onthe other hand, the total number ofstandalone health insurers increasedfrom 1 to 4 during 2009-10 to 2013-14.The number of specialized insurer’s,however, remained unchanged duringthe period. See Table-1 for details.
Of particular interest is the standing ofthe Indian general insurance sectorvis-a-vis the global scenario. For the sake
Efficiency, Productivity and Returns to Scale of Indian General Insurance Industry :Evidence Based on Panel Data
25
of international comparison, we consi-der two performance indicators-insur-ance density and insurance penetration.Insurance density is calculated as theratio of insurance premium (in US $)to the total population of the country. Onthe other hand, insurance penetrationis computed as the ratio of insurancepremium to GDP (in % terms).
Section-2 : Efficiency, TotalFactor Productivity and Returnsto ScaleIn a market driven economy with com-petition coming from both domesticand overseas competing firms, each pro-ductive entity needs to remain con-cerned about efficiency, productivityand returns to scale. In plain language,
efficiency corresponds to the perfor-mance of a productive unit with respectto some observed/ virtual best practiceunit. Productivity corresponds to theratio of output(s) to input(s). Returnsto scale implies the change in outputin relation to changes in the scale ofoperation. Thus, depending on whetherthe return is more than proportionate,exactly proportionate or less thanproportionate, we can classify returnsto scale into three types : increasing,constant and decreasing.
In the computation of efficiency andproductivity, the concept of returns toscale plays an important role. If thetechnology exhibits constant returns toscale throughout, the technology isglobal implying that the same benchmark
Table-1 : Players in the General Insurance Market(1999-00 to 2013-14)
Year 1999-00 2009-10 2013-14
No of diversified 4 19 21general insurers
Standalone health insurer 0 1 4
Specialised general insurers 1 2 2
Source : IRDA (2014) : Handbook on Indian Insurance Statistics 2013-14.
Table-2 : General Insurance Density and Penetration :India and the World (2014)
General Insurance Insurance Density Insurance Penetration
India 11 0.70
World 294 2.70
Source : IRDA (2017) : Handbook on Indian Insurance Statistics 2016-17.
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applies for all firms irrespective of theirscale of operations. However, if thereturns to scale is variable, then the refe-rence units can be different for differentunits under observation. In a similarvein, the returns to scale exhibited byan unit has important implications forthe average productivity of the firm.Depending on the nature of returns toscale, the observed firm observed scalesize will be less than, equal to or greaterthan the most productive scale size(Banker, 1984).
Efficiency, Productivity andReturns to Scale for a SingleInput-Single Output TechnologyIn order to provide a more formal pre-sentation of the relationship of returnsto scale with efficiency and producti-vity, let us consider a single input-single output technology (Ray, 2004)characterized by the productionpossibility set :
PS = [(x,y) : y<f(x)]
Here y and x stand for output and inputrespectively. The inequality sign allowsthe possibility of x-inefficiency : obser-ved output can be less than or equal tothe potential output suggested by thetechnology. Efficiency from the output
perspective is defined as : E yf x
o =( )
. Let
firs(x), fcrs(x) and fdrs(x) represent the bestpractice output under increasing,
constant and decreasing returns to scale.Since in the case of Most ProductiveScale Size (MPSS), the technologyexhibits constant returns to scale, wehave firs(x) < fcrs(x) and fdrs(x) < fcrs(x).Thus if we accommodate variable re-turns to scale (i.e. returns to scale canbe increasing, constant or decreasing)then E Evrs
ocrso≥ .
Now let us consider the linkage of pro-ductivity with the returns to scale. We
define average productivity AP= f xx( ) .
By using the previous logic,
APf xx
f xxcrs
crs vrs= ( ) ≥ ( ) . Thus average pro-
ductivity is highest when the firmexperiences MPSS.
Efficiency, Productivity andReturns to Scale in a Multi-Input Multi-Output SettingWe now consider a technology PT
which models the transformation ofinputs x (numbering 1,2, ..…, n) onto outputs y (numbering 1,2, ….., m).Thus x RN∈ + and y RM∈ + .
Then the production technology canbe represented as :
PT = [(x,y) : x can produce y]
Invoking Shephard (1953,1970), theoutput distance function may beexpressed as :
Efficiency, Productivity and Returns to Scale of Indian General Insurance Industry :Evidence Based on Panel Data
27
D x y x y Tfo , min : ,( ) = ⎛
⎝⎜
⎞
⎠⎟∈
⎧⎨⎪
⎩⎪
⎫⎬⎪
⎭⎪=µ
µ
x y PTmax : ,= ( )∈{ }⎡⎣ ⎤⎦−
δ δ11
An observed firm is inefficient whenD x yfo ,( ) <1 and is efficient whenD x yfo ,( ) =1 .
For a firm with observed outputand input vectors being y0 and x0
respectively, the optimization problemis : Max δ
Subject to : δ λy Y0 ≤ and x X e0 1≥ =λ λ,
(for vrs). Thus = Eo =1δ
Note that, for period-wise data, wemake use of the period specific obser-vations on input and output as the refe-rence sets. However, for panel data, wecan use the entire panel as the referenceset (see Charnes et.al., 1985). Thus ifwe have a panel of observations relatingto the inputs and outputs (in our casen.t observations on inputs and m.tobservations on outputs assuming thatobservations are available for timeperiods 1,2, ....., t), then the modifiedmathematical program would be :
Max δp
Subject to : δ λy Yp0 ≤ and x X ep0 1≥ =λ λ,
(for vrs). Thus Ep
01=δ
where the sub-
script p implied that the reference set isactually a panel.
While estimating productivity, we areprimarily interested in knowing howproductivity has changed inter-tempo-rally. The non-parametric approach ofproductivity estimation assumes theexistence of a production/cost functionbut does not require a parametric rela-tionship between the outputs and inputs.The most popular non-parametricmeasure of total factor productivitychange is the the Malmquist Produc-tivity Index which was introduced by.Caves, Christensen and Diewert (1982).The computation of Malmquist Pro-ductivity Index, like the case of DEAbased efficiency estimation, is based onthe concept of input and output dis-tance functions originally introducedby Shephard (1953, 1970).
For understanding the methodology ofMalmquist productivity estimation, letus consider two consecutive time periods0 and 1. Using the technology of timeperiod 0, the Malmquist ProductivityIndex as per Caves, Christensen andDiewert (1982) can be defined as :
MD x y
D x y
xyxy
f
f0
0 1 1
0 0 0
1
1
0
0
=( )( ) ×,
, and
MD x y
D x y
xyxy
f
f1
1 1 1
1 0 0
1
1
0
0
=( )( ) ×,
,
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28
Under the assumption of constantreturns to scale, the frontier is anupward rising straight line implying
that, xy
xy
1
1
0
0= . we have MD x y
D x yf
f0
0 1 1
0 0 0=
( )( ),
,
and MD x y
D x yf
f1
1 1 1
1 0 0=
( )( ),
,.
The Malmquist productivity change
index is computed as = M M0 1.
Under the operation of constant returnsto scale, Färe, Grosskopf, Lindgren andRoos(1989,1992) decomposed theoutput based Malmquist index into thefollowing two components: EfficiencyChange and Technical Change.
Efficiency Change = D x y
D x yf
f
0 1 1
0 0 0
,
,( )( )
Technical Change =
D x y
D x y
D x y
D x yf
f
f
f
0 1 1
1 1 1
0 0 0
1 0 0
12,
,
,
,( )( ) ×
( )( )
⎡
⎣⎢⎢
⎤
⎦⎥⎥
Under variable returns to scale, bothefficiency change and technical changecomponents can be decomposed further.Färe, Grosskopf, Norris and Zhang(1994) decomposed the efficiencychange component of Malmquist indexinto pure efficiency and scale components.
Pure Efficiency Change = D x y
D x yf VRS
f VRS
1 1 1
0 0 0( )
( )
( )( ),
,
Scale Efficiency Change =
=
D x y
D x y
D x y
D x y
f CRS
f VRS
f CRS
f VRS
1 1 1
1 1 1
0 0 0
0 0 0
( )
( )
( )
( )
( )( )( )
,
,
,
,(( )
Wheelock and Wilson (1999) decom-posed the Technical Change (CRS) into the two components : Pure TechnicalChange and Change in Scale of Techno-logy. Thus as per Wheelock andWilson (1999), Malmquist ProductivityIndex (VRS)= Pure Efficiency ChangeX Scale Efficiency Change X Pure Tech-nical Change X Change in Scale ofTechnology.
Change in Scale of Technology =
=
D x y D x y
D x y D x yf CRS f CRS
f VRS f VRS
0 1 1 0 0 0
0 1 1 0 0( ) ( )
( ) ( )
( )× ( )( ), ,
, , 00
1 0 0 1 0 0
1 0 0 1
( )( ) ( )( )
( ) ( )
( ) ( )
D x y D x y
D x y D xf CRS f CRS
f VRS f VRS
, ,
, 00 0, y( )
⎛
⎝
⎜⎜⎜⎜⎜⎜
⎞
⎠
⎟⎟⎟⎟⎟⎟
Bootstrap Estimation ofMalmquist ProductivityIn the present context, we have obser-vations on only 15 insurance compa-nies per year. In the estimation ofMalmquist productivity index, wemake a pair-wise comparison for twoyears. Thus the sample size is quitesmall. For a finite sample size, Bankeradmitted that for a finite sample size,the estimated production frontier would
Efficiency, Productivity and Returns to Scale of Indian General Insurance Industry :Evidence Based on Panel Data
29
lie below the theoretical frontier. Thus,DEA estimates of efficiency wouldoverestimate the true position. Further,Korostelev, et al (1995a, 1995b) havedemonstrated that while the DEA esti-mates are consistent (under very weakgeneral conditions) the rate of conver-gence ( to the true frontier) is very slow,Thirdly and finally, the DEA basedestimates by giving only point esti-mates, are not amenable to statisticalinterpretation.
In order to overcome the problem, wehave made use of smoothed bootstrapmethod suggested by Simar and Wilson(1998). The plain vanilla bootstrapmethod suggested by Efron (1979)implies procedure of drawing withreplacement from a sample and theresultant samples mimic the data gene-rating process of the underlying truemodel which can be used for statisticalinference. In the context of efficiencyanalysis, the conditional density of thedistance function has bounded supportover the interval (0,1) and is right dis-continuous at 1. In order to cope withthe problem, Simar and Wilson (1998)made bootstrap estimation of the dis-tance function using univariate kernelestimates of the marginal density of theoriginal estimates. Thus for a randomvariable X having values x1, x2, …., xn
with probability density function f andcumulative distribution function F, f isestimated by using the Parkan-Rosenblatt
kernel = f nh k xhn
ei
n= ( ) −⎛⎝⎜
⎞⎠⎟
−
=∑1 1
θ where the
kernel k is an univariate pdf and h is thesmoothing parameter. In case of efficiencyestimation, x <1. then a symmetric kernel
is used : g nh kxh
k xhn
ei
n=−( ) + − +⎧
⎨⎪
⎩⎪⎫⎬⎪
⎭⎪−
=∑1 1
2θ θ .
Appropriate values of the smoothingparameter is found by maximizing thelikelihood cross validation function(refer Silverman (1986)).
For incorporating the bootstrap processfor the estimation of efficiency, weassume a data generating process (DGP)in which the firms deviate in a randomfashion from the production frontierat time t. From the output perspective,this is measured by the output distancefunction Dt
0 . In the bootstrap approach,
this DGP is replicated multiple timesresulting in a large number (say B) ofpseudo samples of input and output
variables : T x ybitb
itb= { }, where i = 1,2,
...., n and t = 0,1, The original estimatorsare now applied to these pseudo samples.For each bootstrap sample b Bs ∈ , effi-ciency is computed by measuring thedistance of each observation belongingto the original sample from the frontierconstructed from the pseudodata.
In the context of computation of theMalmquist productivity index, it isessential to utilise the relationshipP x yT it it* * *,= { } for measuring the distance
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30
of each observation belonging to theoriginal sample from the frontier createdout of the pseudo sample of inputs andoutputs.
D x yf y0
0 0
1, sup ,( ){ } =
−
θ θ
Subject to : θy Yb0 0≤ .....(5)
x Xbj j j0 0 0≥ ∑ ≥λ λ λ, ,
D x yf1
1 1
1, sup ,( ){ } =
−
θ λ θ
Subject to : θ λy Yb1 1≤ .....(6)
x Xbj j j1 1 0≥ ∑ ≥λ λ λ, ,
D x yf0
1 1
1, sup ,( ){ } =
−
θ λ θ
Subject to : θ λy Yb1 0≤ .....(7)
x Xbj j j1 0 0≥ ∑ ≥λ λ λ, ,
D x yf1
0 0
1, sup ,( ){ } =
−
θ λ θ
Subject to : θ λy Yb0 1≤ .....(8)
x Xbj j j0 1 0≥ ∑ ≥λ λ λ, ,
In case of estimation of Malmquist indexof productivity change, we deal with paneldata with the possibility of temporalcorrelation. To preserve this, the jointdensity of two period distance functionsis estimated. The bivariate kernel can
be written as : f nhk x
hbne
i
n= −⎛
⎝⎜
⎞
⎠⎟=∑1
2 1
* *θ
where x* has (1X2) dimension andθ* / /( , )= D D0 0 1 1 . However, when the supportof f is bounded (as is the case with
Malmquist Productivity Index) theestimated density from the bivariatekernel is inconsistent and asymptoti-cally biased. Thus we use the symmetrickernel using Silverman’s reflectionmethod. For further details on thisissue, see Simar and Wilson (1999).
The next issue is that of bias correction.After the computation of the bootstrapvalues it is essential to correct for thefinite sample bias prevailing in the originalestimators of the distance function. Thebias is calculated as :
Bias MMB
Mb
B
001
0( ) = −=∑ *
Thus the bias
corrected estimate of Malmquist indexof productivity change is computed
as : M MMB
bc b
B
0 0012= − =∑ *
Finally, we need to generate intervalestimates of Malmquist index of producti-vity change. For this, we approximate
the unknown distribution of M M0 0−( )by M M0 0
* −( ) conditioned on the originalsample data. Since we do not know the
distribution of M M0 0−( ) , we can use
the bootstrap estimates to find out val-ues aα
* and bα* such that Prob
− ≤ −( ) ≤ −{ }b M M aa* *
0 0 α tends to 1-α. By
reversing the sign and rearranging theterms we get a confidence interval of1-α :
M a M M b0 0 0+ ≤ ≤ +α α* *
Efficiency, Productivity and Returns to Scale of Indian General Insurance Industry :Evidence Based on Panel Data
31
Related Research WorkOne of the earliest efficiency-produc-tivity study in the context of the gene-ral (non-life) insurance industry wasby Toivanen (1997) who researched forthe presence of economies of scale andscope in the Finnish non-life insurancesector using data for the period 1984-91. The study involved the estimationof a quadratic cost function. During theperiod of study Finnish non-life busi-ness was branch centric in nature andthe insurance firms tried to expand theirbranch network for gaining marketpower or informational advantages.The study revealed that diseconomiesof scale existed at the firm level whereaseconomies of scale was present at thebranch level. Economies of scope waspresent in the production process.
Fukuyama and Weber (2001) estimatedefficiency and productivity growth ofJapanese non-life insurance companiesfor the time period 1983-1994. Thestudy estimated Farrell, Russell andZieschang measures of output orientedtechnical efficiency and on the basis ofthese measures, constructed Malmquistindex of total factor productivitychange. Then the index is decomposedinto efficiency change and technologi-cal change indices. The outcomes of thestudy showed that between 1983-90productivity improved significantlyand it was mainly due to technological
change. In the next three years, thecollapsed bubble economy resulted inthe stagnation of technological change.However, by 1993-94, there was againan upturn in technological change.
Cummins and Xie (2008) assessed theefficiency and productivity effects ofmergers and acquisitions in the USproperty-liability insurance industryduring the period 1994-2003 usingdata envelopment analysis (DEA) andMalmquist productivity index. Thestudy examined efficiency and produc-tivity shifts for three types of insurers :acquirers, acquisition targets, and non-M&A firms. For examining characteris-tics of the in-sample firms, the studyemployed probit analysis. The resultsprovide evidence that mergers and acqui-sitions in property-liability insuranceindustry enhanced firm valuation. Thestudy further found that the acquiringfirms achieved more revenue efficiencygains than the non-acquiring firms, andtarget firms experienced greater costand allocative efficiency growth com-pared to non-targets.
Kasman and Turgutlu (2009) appliedthe Malmquist total factor productivityindex to examine productivity growthin Turkish insurance industry for theperiod 2000-2005. The overall produc-tivity growth is the decomposed in totechnological change and efficiencychange. Their study found that during
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32
the period the non-life sector had apositive productivity growth (especiallyduring 2003-05) while the life insur-ance sector regressed. The growth in thenon-life sector was mainly due tofavourable efficiency shifts.
Barros, Nektarios and Assaf (2010)employed the two-stage double boot-strap approach to evaluate the perfor-mance of Greek life and non-lifeinsurance companies using the globaltechnology framework for the period1994-2003. The first stage efficiencyresults indicate a decline in efficiencyover the sample period. The secondstage truncated regression confirmedthat the competition for market sharesis a major influencing factor ofefficiency performance in the Greekinsurance industry.
Vencappa et.al. (2013) estimated anddecomposed productivity growth foran unbalanced panel of Europeaninsurance companies for the period1995-2008. The study estimatedproductivity growth using a parametricstochastic frontier method. Total factorproductivity change is then decomposedin to four components : (i) technicalchange, (ii) scale efficiency change,(iii) technical efficiency change and (iv) scaleefficiency change. In order to capturethe inherent variability encounteredin the insurance sector, the study usedthree output proxies : total premiums
collected, total claims incurred and thesum of claims paid and any changesmade to the insurer’s loss reserves. Thestudy found that total productivitygrowth in the European insurancesector was volatile in nature and drivenprimarily by changes in mean technicalefficiency.
Javaheri (2014) estimated total factorproductivity change in respect of allIranian insurance companies relative tothe period 2003-2009 using data enve-lopment analysis. In order to examinethe influence of environmental variableon productivity, he used to bit regres-sion was. The results indicated that thepolicy of liberalization had a positiveimpact on productivity growth.Further, the results also indicated thatdimension and the field of activityhad significant positive effect onproductivity changes.
Alhassan and Biekpe (2015) analysedeficiency, productivity and returns toscale economies in the non-life insu-rance market in South Africa for thetime span 2007-2012. Data envelop-ment analysis was employed to estimateefficiency and returns to scale whileproductivity growth was analysed byusing Malmquist productivity index.They applied Truncated bootstrappedand logistic regression techniques forfinding out the determinants of efficiencyand the probability of operating under
Efficiency, Productivity and Returns to Scale of Indian General Insurance Industry :Evidence Based on Panel Data
33
constant returns to scale. The resultsshowed that non-life insurers operatedwith about 50 per cent efficiency.Approximately 20 per cent of insurerswere scale efficient. The study alsofound productivity improvementsduring the period which was mainlydue to technological changes. The resultsof the regression analysis indicated anon-linear impact of size on efficiencyand constant returns to scale. Variableslike product line diversification, rein-surance and leverage also had a signifi-cant relationship with efficiency andconstant returns to scale.
Data, Results and DiscussionInputs, Outputs and DataEstimation of efficiency and produc-tivity performance of the non-lifeinsurance companies require the iden-tification of performance indicators(inputs and outputs of the productionprocess). However, this is a challengingtask in so far as the general insuranceindustry is concerned. There are long-standing disagreements among theresearchers regarding the appropriatechoice of inputs and outputs. The samevariable has been used as an input insome research studies and as an out-puts in other studies. For getting moreinformation on the extant approachesto the selection of inputs and outputs,see Eling and Luhnen (2010), Levertyand Grace (2019) and Jarraya and
Bouri (2012). On the whole, assuggested by Leverty and Grace (2010),there are two dominant competingapproaches for the identification andselection : the Flow Approach and theValue Added Approach.
The Flow Approach treats the insu-rance firms as financial intermediarieswhich acts as transforming institutionsof premiums in to claims payment.The important Flow Approach outputindicators are rate of return on invest-ments, the ratio of liquid assets to lia-bilities and the probability of solvencyof the insurance company. The inputsinclude the current policy holder’s sur-plus, the sum of the costs incurred forperforming the underwriting andinvestment functions and the policy-holder supplied debt capital (represen-ted by the sum of unpaid net losses,unpaid loss adjustment expenses andunearned premium reserves).
The alternative approach i.e., the ValueAdded Approach uses outputs relatedto the amount of financial services pro-vided by the insurance firms. Theimportant output indicators in theValue Added Approach include claimsexpected to be paid as a result of pro-viding insurance coverage during a par-ticular period and the average realinvested assets of a firm. The importantinput indicators include expenditure onlabour and physical capital, financial
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34
equity capital and policy holdersupplied debt capital.
In the present context, we have used ahybrid approach with the inclusion oftwo inputs and two outputs. The twoinputs are operating expenses and netpremium income. Since item-wise ex-penses relating to labour and physicalcapital are not available, operating ex-penses relating to the insurance busi-ness serves as a broad indicator for theseexpenses. On the output side, there aretwo important indicators: benefits paidand asset under management. The firstone i.e. benefits to the policy holdersrepresents the claims paid to the policyholders i.e. it represents the real insur-ance services provided by the generalinsurers. The second one represents in-vested assets of the firm and it has beentaken as a free output link. The in-sampleinsurance companies are assumed tooperate under variable returns to scale.Productivity estimation is made forthe output-oriented approach. Thenominal data have been appropriatelydeflated to facilitate inter-temporalcomparison.
Data related to the Indian generalinsurance companies have been collectedfor the period 2009-10 to 2013-14from IRDA Annual Reports and theHandbooks of Indian Insurance Statis-tics for the financial years 2011-12 and2013-14. Fifteen general insurancecompanies have been included in thestudy. Other companies could not beenincluded because it was essential to forma balanced panel of observations.
Results and DiscussionIn the present section, we provide esti-mates of panel (window) based esti-mates of efficiency, bias corrected boot-strap estimates of Malmquist produc-tivity estimate and it components andreturns to scale exhibited by the insample general insurers.
Window Analysis of EfficiencyTable-3 provides the descriptivestatistics of output oriented efficiencyestimates for the in-sample generalinsurers for the period under observation.However, the efficiency scores arederived using the entire panel of
Table-3 : Selected Performance Indicators
Indicators Input Indicator Output Indicator
Net premium income √ X
Operating expenses √ X
Benefits paid X √
Asset under management X √
Source : Author’s own.
Efficiency, Productivity and Returns to Scale of Indian General Insurance Industry :Evidence Based on Panel Data
35
observations (including 80 observationpoints) as the reference set. Since thereference set is the same, the efficiencyscores are comparable from one periodof time another. The results clearlypoint out that during reference timespan, mean efficiency has improved.Similar improvement is also seen inrespect of minimum efficiency scoresand standard deviation of efficiencyscores except for 2010-11. The detailedinsurer- wise efficiency scores are avai-lable in appendix Table-A1.
Returns to Scale EstimatesTable-5 provides the summary infor-mation regarding returns to scale esti-mates exhibited by the general insurersfor the period under observation. TheTable shows that during the last twoobserved years (2012-13 and 2013-14respectively), 14 out of the 15 generalinsurers exhibited decreasing returns toscale. Thus most of the general insur-ers were not operating at the optimalscale where observed productivity
Table-4 : Window Based Estimation of Efficiency
Particulars 2009-10 2010-11 2011-12 2012-13 2013-14
Mean Efficiency 0.7641 0.7852 0.9245 0.9288 0.9314
Maximum 1 1 1 1 1
Minimum 0.5228 0.3860 0.7399 0.7540 0.7582
Standard Deviation 0.1813 0.2159 0.0995 0.0840 0.0785
Source : Calculated.
Figure-1 : Inter-Temporal Movement in Efficiency
2009-10 2010-11 2011-12 2012-13 2013-14
1.2
1
0.8
0.6
0.4
0.2
0
Mean Efficiency
Maximum
Mimnimum
Standard Deviation
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36
equals the optimal. The detailedinsurer-wise information about returnsto scale for the period under observa-tion is available in appendix Table-A2.
Trends in Total Factor ProductivityIn the present context, computation ofefficiency has been made without con-sidering the fact that during the periodunder consideration, the frontier itselfmight have shifted due to technologi-cal change. As indicated earlier, the
computation of Malmquist productivityindex along with its component enablesus to understand how productivitychange has been influenced by its twomajor constituents: change in efficiencyand change in the frontier itself. Table-5provides the mean bias-corrected scoresrelating to the index and its components(and sub-components) for the entireperiod under consideration. Theinsurer-wise estimates are available inappendix Tables-A3 to A8.
Table-5 : Summary Information about Returns to Scale
Particulars 2009-10 2010-11 2011-12 2012-13 2013-14
Number of general 1 1 0 1 1insurers exhibiting CRS
Number of general 3 3 2 0 0insurers exhibiting IRS
Number of general 11 11 13 14 14insurers exhibiting DRS
Source : Calculated.
Table-5 : Bias-Corrected Productivity Scores Over the PeriodUnder Observation
Productivity Measure Mean Score Lower Bound Upper Bound
Malmquist Productivity Index 1.0450 0.9849 1.0985
Pure Efficiency Change 1.2718 1.1777 1.4802
Scale Efficiency Change 1.0982 1.0112 1.2907
Efficiency Change 1.4147 1.3997 1.5629
Pure Technical Change 0.9308 0.8439 0.9498
Scale Efficiency of Technical Change 0.9877 0.8888 1.0994
Technical Change 0.7838 0.7176 0.7966
Source : Calculated.
Efficiency, Productivity and Returns to Scale of Indian General Insurance Industry :Evidence Based on Panel Data
37
Concluding ObservationsThe present paper made use of twointer-temporal approaches for the esti-mation of insurer performance over thefive year span 2009-10 to 2013-14.Initially we have assumed that there isno technical change during the periodunder consider and treat each insurerin a particular year as a distinct deci-sion-making unit. The windowapproach to efficiency analysis reveals thatduring the period under consideration,mean efficiency scores have improvedimplying that the insurance companieshave reached closer to the frontier.
However, we have assumed that theproduction technology is local and thusfrom the estimation process, we areunable to get any information aboutscale efficiency. Thus, in the next stage,we have computed returns to scale onthe basis of panel data. The outcomes
indicate that most of the insurers arenot operating at the optimal scale andthe proportion of insurers exhibitingdecreasing returns to scale has increasedover the observation period.
The window analysis is silent abouttechnical progress/regress and for ascer-taining total factor productivitychanges, we have estimated Malmquistproductivity index and its efficiencyand technical change components. Theresults indicate that while the insurerswitnessed positive efficiency shifts dur-ing the period, technical change hasbeen on the negative direction. Decom-position of efficiency change in to pureand scale components indicate that thepure efficiency change factor is thedominant one. However, the decom-position of technical change leads to theinfeasibility problem for six out of the15 in-sample general insurers and no
Figure-2 : Point and Interval Estimates of Productivity Indicators
Malm
quist
Pro
ducti
vity
Inde
x
1.81.61.41.2
10.80.60.40.2
0
Pure E
fficie
ncy
Chang
e
Scale
Effi
cienc
y Cha
nge
Efficie
ncy
Chang
e
Pure
Techn
ical C
hange
Self-
Efficie
ncy T
echn
ical C
hang
e
Techn
ical C
hange
123123123123123123123123123123123123
123123123123123123123123123123123123
123123123123123123123123123123123123123123123
123123123123123123123123123123123123123123123
123123123123123123123123123123123123123123
123123123123123123123123123123123123123123123123123123123
123123123123123123123123123123123123123
123123123123123123123123123123123123
123123123123123123123123123123123123123123123123123
123123123123123123123123123123123123123123123123
123123123123123123123123123123123123123123123123
123412341234123412341234123412341234123412341234123412341234123412341234123412341234
123123123123123123123123123123123
123123123123123123123123123123
1234123412341234123412341234123412341234123412341234
123123123123123123123123123123123123
123123123123123123123123123123
123123123123123123123123123123123123123123123
123123123123123123123123123
123123123123123123123123
123123123123123123123123123123123
Mean Score
Lower Bound
Upper Bound
123123123
123123123
123123123
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conclusion should be drawn on thebasis of the truncated sample.
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— x — x —
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Table-A1: Efficiency Performance of the In-Sample General Insurers
Insurer 2010 2011 2012 2013 2014
Bajaj Allianz 0.6783 0.8279 0.8353 0.828185 0.847435
Bharti AXA 0.5847 0.3860 1 1 0.954402
Cholamandalam 0.5641 0.5684 0.769548 0.849898 0.878305
Future Generali 0.5580 0.4498 0.999999 1 1
HDFC Ergo 0.7319 0.7273 0.909503 0.836035 0.902241
ICICI Lombard 0.9413 1 1 0.966219 0.972695
IFFCO Tokio 0.8206 1 0.955501 0.8396 0.835531
Reliance 0.7150 0.7871 1 1 1
Royal Sundaram 0.6104 0.6536 0.739913 0.928925 0.861348
Shri Ram General 1 1 1 1 1
Tata AIG 0.5228 0.5640 0.752072 0.754029 0.758194
National 0.7442 0.9388 0.942914 1 0.961148
New India 1 1 1 1 1
Oriental 0.9894 0.8749 0.962079 0.943038 1
United 1 1 1 0.986481 1
Source : Calculated.
Appendix
Efficiency, Productivity and Returns to Scale of Indian General Insurance Industry :Evidence Based on Panel Data
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Table-A2 : Insurer-wise Returns to Scale for the In-Sample Years
Insurer 2009-10 2010-11 2011-12 2012-13 2013-14
Bajaj Allianz Decreasing Decreasing Decreasing Decreasing Decreasing
Bharti AXA Decreasing Increasing Decreasing Decreasing Decreasing
Cholamandalam Increasing Decreasing Decreasing Decreasing Decreasing
Future Generali Increasing Increasing Increasing Decreasing Decreasing
HDFC Ergo Increasing Decreasing Decreasing Decreasing Decreasing
ICICI Lombard Decreasing Decreasing Decreasing Decreasing Decreasing
IFFCO Tokio Decreasing Constant Decreasing Decreasing Decreasing
Reliance Decreasing Decreasing Decreasing Decreasing Decreasing
Royal Sundaram Decreasing Decreasing Decreasing Decreasing Decreasing
Shri Ram General Constant Increasing Increasing Constant Constant
Tata AIG Decreasing Decreasing Decreasing Decreasing Decreasing
National Decreasing Decreasing Decreasing Decreasing Decreasing
New India Decreasing Decreasing Decreasing Decreasing Decreasing
Oriental Decreasing Decreasing Decreasing Decreasing Decreasing
United Decreasing Decreasing Decreasing Decreasing Decreasing
Source : Calculated.
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Table-A3 : Bias Corrected Estimates of Mean Productivity,Efficiency and Technical Change
Insurer Malmquist Productivity Efficiency Change Technical Change
Bajaj Allianz 1.1734 1.1995 0.9116
Bharti AXA 1.0715 3.3732 0.3567
Cholamandalam 1.1803 1.6273 0.7172
Future Generali 1.0475 2.0312 0.5598
HDFC Ergo 0.9755 1.3574 0.7481
ICICI Lombard 0.9227 0.9760 0.8717
IFFCO Tokio 1.0045 1.0231 0.8778
Reliance 1.2297 1.4191 0.8056
Royal Sundaram 1.1549 1.3595 0.7718
Shri Ram General 0.1577 0.9025 0.1815
Tata AIG 1.1698 1.6158 0.7340
National 1.0282 1.1878 0.7718
New India 1.0063 1.0080 0.8692
Oriental 0.7770 0.9492 0.7463
United 0.8737 0.9660 0.8404
Source : Calculated.
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Table-A4 : Bias Corrected Estimates of Mean Efficiency and TechnicalChange Components
Pure Scale Pure Scale Efficiency Insurer Efficiency Efficiency Technical of Technical
Change Change Change Change
Bajaj Allianz 1.1569 0.9591 0.9119 0.9551
Bharti AXA 1.5514 1.8563 NA NA
Cholamandalam 1.4968 1.0079 NA NA
Future Generali 1.5185 1.1066 NA NA
HDFC Ergo 1.1687 1.0524 NA NA
ICICI Lombard 0.9703 0.9258 0.8474 0.9593
IFFCO Tokio 0.9547 0.9986 0.9109 0.9414
Reliance 1.2683 1.0000 0.8185 0.8570
Royal Sundaram 1.3506 0.9377 0.6926 0.9788
Shri Ram General 0.9025 1.0000 NA NA
Tata AIG 1.4080 1.0000 NA NA
National 1.1677 0.8270 0.8402 0.8442
New India 0.9194 0.7855 0.9873 0.6854
Oriental 0.9221 0.8821 0.7434 0.9224
United 0.9097 0.8296 0.8430 0.8553
Source : Calculated.
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Table-A5: Bias Corrected Lower Bounds of Productivity,Efficiency and Technical Change
Insurer Malmquist Productivity Efficiency Change Technical Change
Bajaj Allianz 1.1734 1.1995 0.9116
Bharti AXA 1.0715 3.3732 0.3567
Cholamandalam 1.1803 1.6273 0.7172
Future Generali 1.0475 2.0312 0.5598
HDFC Ergo 0.9755 1.3574 0.7481
ICICI Lombard 0.9227 0.9760 0.8717
IFFCO Tokio 1.0045 1.0231 0.8778
Reliance 1.2297 1.4191 0.8056
Royal Sundaram 1.1549 1.3595 0.7718
Shri Ram General 0.1577 0.9025 0.1815
Tata AIG 1.1698 1.6158 0.7340
National 1.0282 1.1878 0.7718
New India 1.0063 1.0080 0.8692
Oriental 0.7770 0.9492 0.7463
United 0.8737 0.9660 0.8404
Source : Calculated.
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Table-A6 : Bias Corrected Upper Bounds of Productivity,Efficiency and Technical Change
Pure Scale Pure Scale Efficiency Insurer Efficiency Efficiency Technical of Technical
Change Change Change Change
Bajaj Allianz 1.1569 0.9591 0.9119 0.9551
Bharti AXA 1.5514 1.8563 Infeasible LP Infeasible LP
Cholamandalam 1.4968 1.0079 Infeasible LP Infeasible LP
Future Generali 1.5185 1.1066 Infeasible LP Infeasible LP
HDFC Ergo 1.1687 1.0524 Infeasible LP Infeasible LP
ICICI Lombard 0.9703 0.9258 0.8474 0.9593
IFFCO Tokio 0.9547 0.9986 0.9109 0.9414
Reliance 1.2683 1.0000 0.8185 0.8570
Royal Sundaram 1.3506 0.9377 0.6926 0.9788
Shri Ram General 0.9025 1.0000 Infeasible LP Infeasible LP
Tata AIG 1.4080 1.0000 Infeasible LP Infeasible LP
National 1.1677 0.8270 0.8402 0.8442
New India 0.9194 0.7855 0.9873 0.6854
Oriental 0.9221 0.8821 0.7434 0.9224
United 0.9097 0.8296 0.8430 0.8553
Source : Calculated.
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Table-A7 : Bias Corrected Upper Bounds of Productivity,Efficiency and Technical Change
Insurer Malmquist Productivity Efficiency Change Technical Change
Bajaj Allianz 1.2798 1.3895 1.0259
Bharti AXA 1.4066 3.6739 0.3603
Cholamandalam 1.3277 1.7339 0.7666
Future Generali 1.2879 2.1445 0.5691
HDFC Ergo 1.1201 1.4238 0.7772
ICICI Lombard 1.0087 1.1019 0.9892
IFFCO Tokio 1.0829 1.2018 1.0164
Reliance 1.3276 1.5888 0.9051
Royal Sundaram 1.2176 1.5248 0.8732
Shri Ram General 0.2277 1.2317 0.1905
Tata AIG 1.2955 1.6564 0.7735
National 1.0672 1.3604 0.8797
New India 1.0615 1.2304 1.0295
Oriental 0.8296 1.0666 0.8483
United 0.9368 1.1157 0.9453
Source : Calculated.
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Table-A8 : Bias Corrected Upper Bounds of Productivity,Efficiency and Technical Change
Pure Scale Pure Scale Efficiency Insurer Efficiency Efficiency Technical of Technical
Change Change Change Change
Bajaj Allianz 1.4253 1.1701 1.0088 1.0623
Bharti AXA 1.8384 2.4302 Infeasible LP Infeasible LP
Cholamandalam 1.7342 1.2010 Infeasible LP Infeasible LP
Future Generali 2.3082 1.2932 Infeasible LP Infeasible LP
HDFC Ergo 1.3577 1.2320 Infeasible LP Infeasible LP
ICICI Lombard 1.1598 1.1213 0.9584 1.0982
IFFCO Tokio 1.1421 1.1109 1.0029 1.0308
Reliance 1.5826 1.2889 0.9293 1.0009
Royal Sundaram 1.5708 1.0794 0.8335 1.1338
Shri Ram General 1.2317 1.0000 Infeasible LP Infeasible LP
Tata AIG 1.5970 1.3314 NA NA
National 1.5841 1.2163 0.8925 1.1425
New India 1.2792 1.4015 1.1955 1.1465
Oriental 1.1383 1.2693 0.8024 1.1358
United 1.2534 1.2149 0.9247 1.1442
Source : Calculated.
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Impact of Privatisation on the Performanceof the Divested Firms : Appraisal of
Empirical StudiesJugal Kishore Mohapatra*
Privatisation of State-owned enterprises (SOEs) has evolved as a major tool of economicpolicy since 1980s across the globe – both in the developed as well as developing countries.This trend has continued even during the more recent period with record levels of revenuesraised from privatisation during 2015 and 2016. To a large extent, governments committedto diverse political ideologies have taken recourse to privatisation with the expectation thatchange of ownership of these enterprises would, inter-alia, bring about significantimprovement in their financial and operating performance, and raise their productivityand efficiency. Has privatisation indeed led to substantive and significant improvement inthe performance of the divested SOEs? An attempt has been made in this survey to reviewand synthesise the evidence provided by forty-six seminal empirical studies which haveinvestigated the impact of privatisation on the performance of the divested enterprises usingunivariate and multivariate analysis, parametric and non-parametric methods. Based onthe appraisal of these studies, key methodological issues and takeaways have been summarised.One of the significant learning's from these studies is that privatisation per se does notautomatically lead to improvement in the performance of the divested enterprises. Post-privatisation performance of these firms may be significantly contingent on contextual,institutional and organisational factors.
Keywords : Privatisation, State-owned Enterprises, Financial and OperatingPerformance, Efficiency.
1. Introduction : The ContextPrivatisation broadly “considered as anymaterial transaction by which State’sultimate ownership of corporate enti-ties is reduced”1 – has evolved as a signi-ficant and major tool of economicpolicy since 1980s across the globe-both in the developed and developingcountries- cutting across governmentsof diverse ideological hues and stripes.
The Journal of Institute of Public Enterprise, July-Dec, Vol. 42, No. 2ISSN : 0971-1864, © 2019.
Though the conservative Governmentled by the ‘Iron Lady’ – Mrs.Thatcher– in UK is commonly reckoned as the
* Jugal Kishore Mohapatra, IAS (Retd), FormerSecretary (Rural Development), Governmentof India, New Delhi.
Currently a doctoral scholar in the XavierUniversity, Bhubaneswar (XUB). This paper is basedon his doctoral research. The author is grateful tothe anonymous referee for valuable comments andsuggestions.
Impact of Privatisation on the Performance of the Divested Firms :Appraisal of Empirical Studies
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torch-bearer of this trend, it should benoted that the first ideologically drivenlarge-scale ‘de-nationalisation’ programmewas indeed launched by KonradAdenauer’s government (Megginsonet al., 1994) in the erstwhile FederalRepublic of Germany (FRG) in the early1960s – kick started by the sale ofmajority stake in Volkswagen througha public share issues in 1961, followedby an even larger secondary share issuefor VEBA in 1965. However, admittedlythe ‘tipping-point’ tilting the politicaland ideological landscape in favourof privatisation was triggered byMrs.Thatcher’s programme of divesti-ture of the British State-Owned Enter-prises (SOEs) during the decade of1980s. Her privatisation programmewas not only viewed as audacious interms of size at that point in time; itwas also considered as bold in terms ofscope as well – covering diverse sectorsof the economy including the core sec-tors and covering enterprises operatingunder both competition and monopo-listic regimes. During the period of herpremiership, over 50 companies werereportedly privatised-including many inthe power and water industries – whichgenerated more that £50 billion for theExchequer2.
Following the path charted by Thatcher’sBritain, the next major country to embracea sizeable privatisation programme wasFrance under Jacques Chirac. The French
programme is also remarkable since itconstituted a structural break in thecountry’s long standing ‘dirigiste’ tra-dition of pervasive state intervention.Over a brief period of 15 months during1986-87, the Chirac governmentdivested 22 large companies worth $12billion (MNR, 1994). After 1987,adoption of privatisation programmesgained momentum and traction acrossthe world, particularly in the developingeconomies of South America, Africaand Asia.
This global trend of divestitures of SOEshas continued even during the first andsecond decade of the 21st century not-withstanding the world-wide financialcrisis in 2008. According to the Privati-sation Barometer Report 2015/16(PBR 2015/16) the total proceeds ofprivatisation revenue during 1988-2016was of the order $3.634 trillion3.
This report also brings out three dis-tinct and significant emerging trends.First, the fraction of privatisation reve-nue raised by EU governments in theworld-wide totals significantly declinedfrom its long-run average of about 37.5per cent to an all-time low of 14.1 percent. Secondly, for the first time theamount raised by governments throughprivatisation sales worldwide reached arecord level in 2015 exceeding the $300billion mark, shattering the previoushigh of $265.2 billion in 2009. Notably,
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the global value of privatisation in 2016– $266.4 billion- is the second higheston record. These record levels of dives-titure revenues during the latest two
years is a pointer towards continuingmomentum of privatisation globally –though its geographical coverage interms of size and scope has not remained
Figure-1 : Worldwide Privatisation Revenue
Source : Privatisation Barometer Report 2015/2016.
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Figure-2 : Worldwide Privatisation Revenue (Billion US$)
Source : Privatisation Barometer Report 2015/2016.
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unaltered. Third, China has emerged asthe leading privatising country duringboth the years in 2015 and 2016. Chinaexecuted 297 sales of at least $50 million– 45 of which raised $1billions pluseach - and raised a staggering $173.2billion during 2015 and 276 sales in2016 (32 worth $1 billion+ each) raising$148.0 billion. China alone hasmobilised nearly 55 per cent of theglobal revenue from privatisationduring 2015/16.
Besides China, major economies of theOrganisation for Economic Co-opera-tion and Development (OECD) inclu-ding United States, Canada, Japan and
Australia as well as developing coun-tries like India and Malaysia have alsoresorted to privatisation on a substan-tial scale during 2015/16. Ranking ofthe top ten countries in terms of thescale of privatisation during these twoyears is shown in Table-1.
As regards the future outlook of dives-titure in 2017 and later years, the PBR2015/16 notes that seven nationalprogrammes – China, Australia, Russia,Turkey, India, Pakistan and Japan – standout either in terms of aggregate size,scope or both. Closer home, in India,emphatic announcement by the UnionFinance Minister in her speech presenting
Table-1 : Ranking of Countries by Total Privatisation Revenues 2015 and 2016
Rank 2015 CountryNo. of Value
2016 CountryNo. of Value
Deals ($million) Deals ($ million)
1. China 297 173,303 China 276 148,047
2. United Kingdom 13 34,779 Australia 5 25,705
3. Italy 11 12,383 France 9 9,596
4. Japan 3 11,947 India 35 7,393
5. India 34 11,358 Netherlands 4 7,099
6. Sweden 6 9,114 Malaysia 11 5,330
7. Australia 5 8,590 Italy 3 4,878
8. United States 6 8,230 Canada 3 4,271
9. Netherlands 3 6,208 Japan 2 4,145
10. Ireland 6 5,712 Greece 4 2,72
2015 World Total 468 319,895 2016 World Total 434 266,389
Source : Privatisation Barometer Report 2015/2016.
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the Union Budget for the financial year(FY) 2019-20 that “strategic disinvest-ment of select CPSEs would continueto remain a priority of this government”and “in view of the current macro-eco-nomic parameters, government wouldnot only reinitiate the process of stra-tegic disinvestment of Air India, butwould offer more CPSEs for strategicparticipation by the private sector” hassignalled a stronger intent of thegovernment to mount a much bolderprivatisation programme than witnessedover the preceding decade4. All thesetrends suggest that privatisation hasneither lost its stream nor its relevanceand acceptability as a public policy option.
Why have governments committed tovaried political ideologies display suchcontinued and sustained zeal forprivatisation? What are the principalmotivating factors underlying this phe-nomenon? While privatisation revenues– raised through sale of assets and sharesof SOEs – does alleviate the fiscal deficitof the government and reduce thepublic sector borrowing requirements,arguably the overarching goal of almostall privatisation programme has beenthe desire to improve the efficiency ofthese enterprises. Has privatisation,indeed, led to substantive improvementin the performance of the divestedSOEs? Does it lead one-off performanceimprovement or the resultant efficiencygains are sustained over time? Does the
extent of efficiency improvementdepend on the extent of privatisation,i.e. majority or partial stake sale? Doesthe impact of privatisation on the per-formance of the divested SOEs dependon business cycles, external macro-economic factors and other exogenouspolicy changes? What happens toemployment in the privatised SOEs?
Though there is a fairly large repositoryof firm-level empirical studies whichhave explored the issues raised above,their findings are not unequivocal andfound to be at variance and inconsistenteven in respect of some focal thematicissues. Only a handful of surveys haveattempted to critically analyse and syn-thesize findings of these studies to gleana broad measure of consensus on somemore generic and contextual conclusionsrelating to the effects of privatisationon the performance of the divested SOEs.Megginson and Netter (2001), the firstmajor survey in this research area andarguably the most widely cited too,largely covers empirical studies ofprivatisation in the developed andmiddle income countries during theperiod 1980-2000. This is, of course,understandable and unexceptionablegiven the fact that few studies relatingto the developing countries were avai-lable at that point of time. Guriev andMegginson (2007) is more inclusive interms of its coverage of the less deve-loped countries, particularly of Latin
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America and transition economies; buteven their survey is restricted to theanalysis of evidence from enterprise levelstudies up to 2002-03. Estrin et al.(2009) assesses findings of studiesrelating exclusively to the transitioneconomies of Central Europe (CEE),Common wealth of Independent States(CIS) and China covering the period1989-2006. Estrin and Pelletier (2018),evaluates more recent firm level studiesof privatisation mainly in the deve-loping countries, though it is restrictedin respect of its sectoral focus havingcovered only the regulated sectorsof banking, telecommunications andutilities.
The present survey seeks to build onthe evidence and findings of the previoussurveys and contribute to the researchin this area in the following respects.First of all, it has attempted a morerepresentative and comprehensive cove-rage of the empirical studies relating tothe developed, developing and transitioneconomies. Secondly, in terms of timeperiod of coverage, studies from themid-1990s up to more recent years havebeen included in this survey. Thirdly,methodological issues relating to the firmlevel empirical studies of privatisationhave been discussed more exhaustivelyin this paper including a criticalappraisal of the different methodologicalapproaches used in the studies.
This paper seeks to present and criticallyappraise salient findings of a set of forty-sixempirical studies which have researched–relying on credible empirical evidenceand using dependable methodology –how ownership change, throughprivatisation, affects “performance” of thedivested enterprises.Remainder of thepaper is organised as follows. Section-2contains a brief discussion of the alter-nate theories of privatisation which seekto explain the superior efficiency ofprivate/privatised enterprises vis-à-vispublic ownership. Section-3 describesthe typology of empirical studies on theimpact of privatisation on the perfor-mance of the divested enterprises whichhave been covered in this survey. It alsocontains salient findings of the studiesand a discussion of the methodologi-cal issues germane to these empiricalstudies. Section-4 summarises the keytakeaways from these studies andSection-5 concludes.
Section-2 : Privatisation : Theo-retical FoundationsSince privatisation has been pursued asa tool of economic policy by countriesacross the globe, a logical and obviousquestion that arises is whether it hasrobust theoretical foundations in main-stream economics which explain whyand how transfer of ownership of SOEsto the private sector fosters superiorproductive and allocative efficiency.
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Theoretical studies that have examinedthe comparative efficiency of privateversus public ownership of firms canbe broadly subsumed under three dis-tinct approaches5:
1) “Agency / Property Rights Theory”
2) “Public Choice Theory”; and
3) “Organisation Theories”.
Each of these approaches, thoughdivergent in their premises and analyticalperspective, seek to provide alternativeexplanations for a commonly agreedproposition that private firms performmore efficiently that the SOEs.
The ‘Agency Theory’ identifies divorceof ownership from control as the rootcause of comparative inefficiency of theSOEs. Though it is assumed, under thistheoretical construct, that ‘managers’(the agent) of both private and publicfirms, maximise of their own utilityinstead of utility of the owners/share-holders of the firm (the principal); forthe private firms existence of the follo-wing external, market based mecha-nisms mitigate this conflict of interestand hold the managers (the agents)accountable for their performance:
i) Market for ownership rights whichprovides an exit option/window tothe owners to divest their stakes incase they are dissatisfied with themanagers’ performance;
ii) The threat and risk of bankruptcy;and
iii)A labour market for managers.
In contrast, SOEs do not have recourseto any of these performance-risk miti-gating mechanisms. Managers of theseenterprises do not have to suffer theeconomic consequences of their deci-sions as a result of which they have veryweak incentives to reduce economicwaste (overstaffing, excessive compen-sation packages and redundant or over-investment) and maximise profitability.Presence of ‘soft budget constraints’also implies that for the SOEs thebankruptcy risk virtually does not exist.Furthermore, in contrast to the privatefirms which have a ‘simple’ and directprincipal-agent relationship, SOEs haveto contend with layers of intermediateagencies intervening between “theprincipals” (i.e. the public) and “theultimate agents” (i.e. the managers ofSOEs), including elected politicians,ministers and nominated boards.Unsurprisingly, the managers (the‘bureaucrats in business’ as agents) havea significant informational advantagevis-à-vis their owners on account of thisinformation asymmetry. This may leadnot only to the problem of adverseselection of the agents; owners ofthe SOEs would also have to face theproblem of moral hazard and inhibitedfrom effective, concurrent monitoring
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of the conduct and behaviour of themanagers. Thus, the structural andoperating environment of the SOEs donot create appropriate incentives anddisincentives to enforce accountabilityand to induce the managers to optimizetheir performance.
The main thrust of the public choicetheories is that politicians and bureau-crats/managers primarily seek tomaximise their “self-interest” instead of“public interest”, for instance, their jobsecurity, career advancement, and highercompensation packages. Their self-seeking conduct led to more expansivebudgets, excess staffing and over-supplyof public output, entailing wastage andhigher losses, thereby significantlyimpairing the enterprise efficiency. Thepoliticians tend to impose goals on theState-owned firms that may maximisetheir electoral clientele; though thesemay adversely impact the firms’ effi-ciency. For instance, this may protectand promote the interest of some stake-holders irrespective of its cost implica-tions. For the citizens, who are “theultimate owners” of the public enter-prises, the costs of monitoring thebehaviour of the “agents” may exceedthe consequential benefits (such aslower taxes or more efficient publicexpenditure). The essence of thistheoretical approach is captured anddemonstrated in a simple but elegant
model in Boycko, et.al. (1996) in whicha firm is required to choose only its levelof expenditure on labour ‘E’. It has theoption of spending an efficient amount-‘L’ or a higher amount ‘H’ (H> L). Thekey parameter in this model is who‘decides’ and ‘controls’ the level of labourspending. It is fair and reasonable toassume that in a firm that is publiclyowned and controlled, ‘E’ would bechosen by the politician. This assump-tion is realistic for the SOEs, since thegovernment exercise significant influ-ence over their major decisions, particu-larly politically sensitive ones concern-ing employment. When the politiciancontrols ‘E’, axiomatically he would setE=H, since the marginal political bene-fits additional spending on labour exceedthe marginal political costs in terms ofprofits foregone by the treasury fromsuch spending. In this way, this simplemodel demonstrates that political con-trol is likely to cause inefficiencies whichpromote the politicians’ goals to thedetriment of the public exchequer andother stakeholders.
Organisation theories draw extensivelyfrom both the above theories and high-light the organisational features of theprivate firms which are different inSOEs such as incentives and disincen-tives, systems of internal controls, cul-tural factors, organisational structures,communications / reporting systems.
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All the three theoretical approaches,thus essentially argue that public andprivate firms are distinct in conduct andperformance because of the fundamen-tal difference in their operating envi-ronment and incentive mechanisms inthe face of information asymmetry andincomplete information.
Though a detailed critique of thesetheories, which have evolved in the con-text of the institutional land scape ofthe developed market economies, isbeyond the scope of this paper; it is per-tinent to offer some comments regard-ing their applicability and relevance tothe less developed countries and emergingmarket economies. In an influentialpaper Dharwadkar, et al. (2000) haveargued that both ‘internal and externalcontrol mechanisms’ (weak governanceand limited protection of minorityshareholders) are likely to exacerbate the‘agency problems’ in the emergingeconomies. Hence privatisation ofSOEs without addressing these risksregulatory reforms of the corporategovernance, capital market, corporatebankruptcy and mergers and acquisi-tion processes might not deliver theanticipated efficiency gains. As regardsthe public choice theory, it needs to bementioned that the public accountabilitymechanisms are likely to be far weakerin the developing countries. Theirenforcement capacity is also likely tobe constrained. Besides, SOEs in these
countries are more likely to be drivenby political mandates than the objec-tive of maximising returns to the share-holders and hence, less likely to be sub-jected to ‘hard budget constraints’. Insuch a scenario, privatisation can beexpected to improve performance of thefirms provided, of course, the privatesector itself is functioning in a well regu-lated ecosystem and not distorted bymarket failures. The approach of the‘organisation theories’, being somewhatmore generic in nature, possibly has asmuch validity tor the firms in theemerging markets as those in the deve-loped countries. To sum up, these theo-retical approaches do tend to condition-ally favour a case for divestiture even inthe developing countries contingentupon the risks flagged therein are miti-gated through appropriate institutionaland organisational reforms.
Section-3 : Privatisation andPerformance : Methodology andSalient Findings3.1 Typology of Empirical Research
3.1.1 However logical and persuasivethe theoretical studies assessing the rela-tively superior efficiency of the privateownership may be, validity andgeneralizability of such hypotheses canonly be tested through rigorous empiri-cal research. It is worth recalling anoft-cited observation of Laffont andTirole (1993) in this context who,
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after presenting their analysis of publicand private ownership in stimulatingefficiency, came round to the view that“theory alone is thus unlikely to beconclusive in this respect”.
3.1.2 In the literature we come acrosstwo broad strands of empirical researchusing eco-matric methods which hasaddressed the question whetherprivatisation improves performance andefficiency of the divested SOEs. Thefirst set of studies examine firm levelimpact of privatisation on the perfor-mance of the divested enterprises on thebasis of empirical evidence in a multi-country, multi-sectoral framework. Theother stream of empirical researchexamines the enterprise level impact ofprivatisation on efficiency in a singlecountry and these studies are alsomostly multi-sectoral. Publication of
these studies started around mid-90ssince adequate number of privatisedfirm level observations from a cross-section of developed as well asdeveloping countries were availablefor rigorous econometric analysis andstatistical testing.
3.1.3 For the purpose of this study, wehave selected as many as 46 such studies,of which 33 are country-specific and 13are multi-country studies (including onestudy that has used case study approach6).The studies which have used econometricmethods can be further categorized intodistinct types based on the methodsused : whether they have used univariateor multivariate methods, and whether theyhave used parametric or non-parametricmethods. The following Tables-1A and1B indicate the broad classification of thestudies in terms of these filters.
Table-1A : (Typology of Empirical Studies)
Coverage Univariate Analysis Multivariate Analysis Both Total
Multi-County Studies 5 4 3 12
Single Country Studies (India) 6(1) 12(3) 15(5) 33(9)
Total 11(1) 16(3) 18(5) 45(9)
Table-1B : (Typology of Empirical Studies) Coverage Parametric Method Non-parametric Method Both Total
Multi-Country Studies 4 5 3 12
Single Country studies 15(8) 6(0) 12(1) 33(9)
Total 19(8) 11(0) 15(1) 45(9)
Note : One single country study has not used either parametric or non-parametric tests.Figures in the parentheses show the type of method used in studies relating to India.
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3.1.4 Studies which have usedunivariate analysis largely follow themethodology pioneered by Megginsonet. al. (1994) – hereinafter “MNR(1994)” – which is based on comparisonof pre- and post-privatisation ‘averages’(computed usually for 3-5 pre-privati-sation years and equal or more numberof post-privatisation years) of selectedperformance proxies. Statistical signifi-cance of the differences in these averagesis tested by applying parametric or non-parametric tests. Studies relying on multi-variate analysis have used multivariateregression (OLS, Panel data regressionmethods -24 studies) and Data Enve-lopment Analysis (DEA-5 studies).
3.1.5 As many as 18 studies coveredin the survey have used both univariateand multivariate analysis and 15 studieshave used both parametric as well asnon-parametric methods. It may alsobe mentioned that the studies includedin the survey provide adequate repre-sentation to the privatisation programmesof both the developed and developingcountries including three large multi-
country studies covering the transitioneconomic of Eastern and CentralEurope. Since China has emerged as theleading country in terms of its scale ofprivatisation in the recent years, threecountry-specific studies of China havebeen included. As far as India isconcerned, 9 studies have been includedpurposively, since in our consideredview this has so far been a relativelyunder-researched area. An attempt hasbeen made to cover possibly all themajor papers published in the top-tierjournals which have empiricallyresearched the effects of privatisation onthe performance of the divested firms.
3.2 Salient Findings of the EmpiricalStudies3.2.1 Synopsis of the salient findingsof the multi-country and single coun-try empirical studies of privatisation,covered in this survey, have been pre-sented in respectively, along with thesample description, period analysed andmethodology used. The overall picturethat emerges from these studies is fairlymixed as indicated in Table-2.
Table-2 : Overall Findings of Empirical Studies
Overall Findings Multi-Country Studies Single Country Studies Total
Supportive 8 12 20
Not Supportive 1 6 7
Partially Supportive/Mixed/ 4 14 18Inconsistent findings
Total 13 32 45
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It would be hard to categorically andunequivocally claim or assert, on thebasis of the conclusions derived by thesestudies, that privatisation of SOEsper se – through transfer of ownership andmanagement control, brings about sta-tistically significant efficiency improve-ments in the divested entities. That said,however, these empirical studies dobring out emphatically the need for thecomplementary institutional reformsand policy action to be pursued along-side privatisation in order to achieve thedesired efficiency outcomes.
3.2.2 Significant divergences amongthe empirical studies of privatisationsmotivated Bachiller (2017) to carry outa meta-analysis of 60 studies publishedduring 1989-2014; the sample covering48 countries for the period 1961-2010.The study examined whether themethod of privatisation and the levelof development of the country of theprivatised enterprises can explain vari-ance in the “financial performance” ofthe privatized SOEs. Results of the metaregression analysis indicated that themethod of privatisation (whether divestedthrough initial public offer- IPO- orthrough other methods) significantlydetermines the performance of theprivatised companies. Besides, the resultscontradicted the more commonly heldassumption that privatisation of SOEsin the developing countries does notimprove their financial performance.
3.2.3 Estrin and Pelletier (2018) havereviewed fifteen recent papers on theeconomic effects of privatisation on theefficiency and performance of the firmsin the developing countries. Studiesincluded in this paper have analysedevidence of the impact of privatisationin three sectors – banking, telecommu-nications and utilities- using single orcross-country samples. The overall con-clusion of this survey also reconfirmsthe proposition that transfer of owner-ship by itself is unlikely to yield theexpected efficiency gains and the impactof privatisation could well be morecontext and sector-specific contingent,inter alia, on the following factors :
• Selection effect- i.e. selection of thefirms for stake sale.
• Extent of privatisation- total or partial.Evidence from the studies includedin their survey provides evidence thatthe effect of total privatisation islikely to benefit more in terms ofefficiency gains.
• Quality and effectiveness of theregulatory framework, which islargely dependent on the prevailingpolitical and institutional setting.
• Competitiveness of the marketstructure and existence of institu-tional mechanisms to promote andenforce effective competition.
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3.3 Methodological Issues in Empi-rical Studies of Privatisation3.3.1 Assessment of effects of privatisa-tion on enterprise performance throughempirical studies poses a complex setof methodological issues. First of all,for determination of the effect of theownership change, we need to have theright ‘control group’ comprising ofentities similar in all respects to the‘treatment group’ – i.e. the sample ofprivatised SOEs – but which were notsubjected to the policy interventionbeing investigated (which in this case isprivatisation). How do we identify themost appropriate ‘control group’?Should we take the same set of SOEs‘before’ privatisation as the ‘controlgroup’, as has been done in a numberof studies based on MNR (1994)methodology, or identify firms havingsimilar economic characteristics –matched at least in terms of relevant,major parameters – from the SOE sectoror from the private sector? In case weopt for the latter,should we identify thefirms to be included in the ‘control group’on the basis of simple and straight forwardcomparison of the descriptive statisticsor should we take recourse to moreadvanced techniques like PropensityScore Matching (PSM)? Thus, figuringout what would have happened tothe sample SOEs, had they notbeen privatised, is arguably complexand problematic. Secondly, which
performance indicators/proxies shouldbe used for evaluating the effects ofprivatisation? Should we use the con-ventional accounting measures of finan-cial and operating efficiency – whichare partial measures- or should we usemore comprehensive measures of pro-ductivity – such as ‘multi-factor pro-ductivity’ (MFP) or ‘technical effi-ciency’ (TE)? In case we opt for thepartial accounting measures, we againhave to decide which are the ‘right’ or‘most appropriate’ set of indicators orproxies. In this context, we also needto recognize that even at a conceptuallevel the objective function of the SOEsis assumed to be less profit-oriented andmore tilted towards non-profit goals;whereas enterprises under private own-ership are more likely to maximizeprofits and returns to the shareholders.Given this fundamental premise,would it be appropriate to assess theenterprise performance – “before andafter divestiture”- on the basis ofchanges in profitability? Would it notfavour privatisation abinitio if non-profit objectives, such as lower prices,or higher employment were beingdeliberately pursued under state owner-ship? Thirdly, privatisation may affect‘allocative efficiency’ and even incomedistribution besides the ‘productive ortechnical efficiency’ of the firms bychanging the relative prices both in theoutput as well as input markets. As
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such, it may have spill over effects onthe rest of the economy which is whyassessment of its impact can be ideallycarried out in a general equilibriummodel. However, setting up GeneralEquilibrium (GE) models is enor-mously complex requiring humongouseconomy wide data on a huge set ofvariables. Unsurprisingly, therefore, fewempirical studies of privatisation haverelied on economy wide GE models7.Fourthly, how to determine the direc-tion of causality in assessing the rela-tionship between privatisation and per-formance? Just as there are studies toshow that privatisation impacts enter-prise performance; there are also stud-ies which show that better enterpriseperformance makes a firm more attrac-tive and likely candidate for divestiture.As such, can we a priori rule out ‘simul-taneous causality’ and ‘endogeneity’ ofprivatisation? If not, how do we handlethis problem in the empirical investi-gation? Fifthly, even the policyannouncement of privatisation of a SOEmay spur intense internal effort, withinthe firm, including its financial and HRrestructuring, to improve its perfor-mance. It is also not unlikely that themomentum of improved performance,generated by these efforts prior to theprivatisation, may continue even afterdivestiture. In such a scenario, do wetreat the observed improvement in
performance after privatisation as the‘privatisation effect’ or as the‘announcement effect’? In reality, thesituation may be even more complex.The observed change in the enterpriseperformance after divestiture may be acombination of these two effects. Inthat case, we have to find out whethercareful and diligent efforts have beenmade in the empirical study to decom-pose these effects.
Finally, more often than not, privati-sation is not a ‘stand-alone’ reforms.Governments pursuing privatisationprogrammes simultaneously resort toa whole range of key policy changes –particularly in the developing countries-such as de-regulation, trade liberaliza-tion, promoting competition, strength-ening corporate governance, setting upregulatory regimes for non-competitiveenterprises and freer capital movement.The observed performance change inthe divested enterprises cannot, in sucha scenario, be simply or solely attrib-uted to the ownership change. Theseexogenous, structural policy changesand business cycles are likely to affectthe enterprise performance, both inde-pendently and also by interacting withthe ownership change. How do we pre-cisely quantity the effects of privatisa-tion by factoring out the effects of theabove mentioned exogenous policychanges and macroeconomic changes?
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3.3.2 Empirical studies reviewed inthis paper cover diverse geographies anddifferent time periods, based on a widearray of methodologies. Not surprisingly,their conclusions differ. What is moreimportant from our perspective is howrobust are the methodologies used toarrive at these conclusions. The mostwidely used univariate analysis in empi-rical studies of privatisation – MNR(1994) methodology – is vulnerable toselection bias and does not adequatelycontrol the effects of concurrent andexogenous macroeconomic and policychanges as well as institutional deve-lopments. In addition, this type ofanalysis does not capture the trend ofperformance improvement which isoften observed after the announcementof privatization, even before its actualexecution. Treating the sample SOEsbefore privatisation as the ‘controlgroup’, without sufficiently controllingfor these factors, might not, therefore,yield unbiased estimates of the effi-ciency effects of privatisation. Some,studies, based on this metho-dology,have, however, sought to mitigate thesedeficiencies by using ‘adjusted perfor-mance measures’ – benchmarking theraw performance measures to the mar-ket or industry averages or indices. Forexample, such an approach has beenused in Boubakri and Cosset (1998),Garcia and Anson (2007) and Aussenggand Jelic (2007). Notably, results based
on the adjusted performance measuresin these studies were found to be lesssignificant than those based on theunadjusted measures. Wei et al. (2003)and La Porta and Lopez-de-Silanes(1999), Omran (2004), Jerome (2008)and Jiang et al. (2009) have followed asomewhat different approach to addressthese problems- by using the firms inthe sample (i.e. the divested SOEs) asthe “treatment group” and comparedtheir performance with a matched“control group” of SOEs which werecomparable in terms of size, performanceand operating in the same industry butnot divested. Notwithstanding theseimprovisations, however, findings ofstudies solely based on the MNR (1994)methodology require further robustnesschecks and validation, preferably, bytaking recourse to a different approach,as has been done in many studies includedin this survey (which have used bothunivariate analysis and multivariateregression analysis).
3.3.3 As regards studies which haveused multivariate regressions – in mostcases advanced panel data techniques –the key issue relates to the appropriate-ness of the model used to address se-lection bias, endogeneity of privatisa-tion, simultaneous causality and thepossibility of ‘omitted variables’. Choiceof the dependent variables and indepen-dent variables for the model, includingthe control variables, also require careful
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consideration; though in this respectmost studies, which have used thesemethods, have largely relied on priorstudies on the subject. In general, mostof these studies have also subjected theirresults to a variety of robustness checks.Notably, the multivariate regressionmodels provide flexibility to determinethe impact of a variety of factors –“economic, political, organizational andinstitutional” – on the post divestitureperformance of the firms. Besides, onecan capture, with some degree of pre-cision, the “dynamic effects” of privati-sation – the “announcement effects”,the “short-run effects” and the “long-runeffects”. Thus, we can assess whetherprivatisation brings about ‘one-off ’or ‘sustained’ improvement in theenterprise performance.
3.3.4 The third set of studies hasassessed the effects of privatisation byestimating productive or technicalefficiency of the firms using DataEnvelopment Analysis (DEA) orStochastic Frontier Analysis (SFA).Some of these studies have also used atwo-stage approach – combining DEAwith Tobit regression to analyse factorsimpacting changes in the TE of thedivested enterprises. Productive efficiencyof a firm can be estimated using twoalternative methods : parametric SFAand non-parametric DEA. Both methodshave their pros and cons. The keystrength of SFA is that it incorporates
a stochastic element in the productionprocess. Accordingly, the estimatesfrom SFA can be subjected to the con-ventional parametric hypothesis testing.On the flipside, however, SFA requiresimposition of an explicit functionalform of the production function andalso assumptions with regard to the ran-dom error term. As such, results of theSFA may be sensitive to the parametricfunctional form used in the model. Incontrast, prior specification of the formof the production function is notrequired for DEA. Hence, its sensitiv-ity to misspecification is less likely. Noassumption regarding the distributionof the error term is also necessary. Itsmain disadvantage, however, emanatesfrom its deterministic approach. Unlikestochastic frontier models, DEA assumesabsence of ‘random noise’ in the dataand attributes deviations from the esti-mated efficiency frontier to inefficiency.Thus, the estimates of DEA may be proneto errors in measurement and noise inthe data. However, as discussed in thestudy of Arocena and Oliveros (2012),the deterministic nature of DEA can beovercome by taking recourse to boot-strapping methods to generate confi-dence intervals for the TE estimates andaccordingly, subject these estimates tohypothesis testing.
Studies using two stage DEA approach –combining DEA with Tobit regression– have to address an additional
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methodological problem arising out ofserial correlation among the DEA esti-mates. Arocena and Oliveros (2012)have demonstrated how bias-correctedand consistent efficiency estimates canbe obtained by application of boot-strapping techniques in the second stageanalysis.
Having due regard to the relative meritsand demerits of both the methods,however, the choice between SFA andDEA primarily depends on the diag-nostic tests which indicate whether thedata set has significant noise or not.
3.3.5 The major strength of methodo-logy used by Galal et al. (1994) liesin the manner in which a “counterfactual scenario” is constructed, whichenables estimation of both financial andwelfare gains from privatisation. Not-withstanding rigour and robustness ofits methodology, however, few subse-quent studies have used it, primarilybecause mapping out the ‘counterfactual’ and its long range projectionnecessitate a number of assumptions tobe made about the structure and futuretrends in the economy over a longperiod, including the future scenario inthe industries and the sectors in whichthe divested SOEs operate, which isinherently fraught with complexitiesand challenges including the risk offorecasts going way off the mark.
3.3.6 In an oft-cited paper, Rodrik(2005) had pointed out some signifi-cant limitations of cross-country empi-rical studies. Cross-country empiricalstudies of privatisation also have to con-tend with a major problem emanatingfrom data comparability and consis-tency. Accounting standards and thequality of financial reporting varieswidely across countries. In particular,quality and reliability of accountingreports of the relatively less developedcountries and also of countries in transi-tion would have to be taken care of insuch studies. This could also be anothersource of selection bias in the cross-country studies as pointed out inMegginson and Netter (2001). Sincedeveloped countries usually had betteravailability and reliability of data, moreso for the firms performing better inthese countries, better performing firmsof the developed counties were possiblydisproportionately represented in theearly cross-country empirical studiesof privatisation, somewhat bluntingtheir external validity vis-à-vis the lessdeveloped countries. Single countrystudies are, however, less susceptible theproblems arising on account of datacomparability.
Section-4 : Empirical Studies ofPrivatisation- Key TakeawayKeeping in view the advantages andlimitations of the alternate methods and
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other methodological issues, discussedin Sub-section 3.3, some of the salienttakeaway from the studies covered inthis survey are briefly discussed below.
4.1 Firstly, does privatisation per seautomatically lead to improvements inthe enterprise performance? This,indeed, is a cross-cutting research ques-tion addressed in several studies. Logi-cally, one should expect strongest empi-rical support for privatisation in themore developed countries from whichthe contemporary wave of privatisationactually originated. Contrarily, how-ever, in both the studies relating to UK(Martin & Parker, 1995; Boussofianeet el 1997), in three of the four studiesrelating to Spain (Villalonga, 2000;Garcia & Anson 2007; and Bachiller,2009), in Alexandre and Charreaux(2004)’s study of France and inFraquelli and Erbetta (1999)’s study ofItaly we do not find statistically signifi-cant and robust evidence of efficiencygains from divestiture. As such, evenin some of the more favourable insti-tutional ecosystems of the developedcountries, with admittedly bettercorporate governance and regulatoryinstitutions, dilution of public owner-ship in the SOEs alone does not seemto be sufficient for bringing about theexpected performance improvements.
4.2 Secondly, why does privatisationby itself does not boost the efficiency
of the divested enterprises? This ques-tion – which logically flows from thefirst one raised in the preceding sub-para- has been fairly well researched inVillalonga (2000), Wu (2007) andArcas and Bachiller (2010). Findings ofthese studies emphatically show thatpost-privatisation performance of thefirms is significantly contingent oncomplementary contextual, institutionaland organizational factors. Amongother things, competition policy, appro-priate regulatory regimes for monopo-listic / oligopolistic industries, sectoralderegulation, trade liberalization, deve-lopment of capital markets, corporategovernance norms and mechanisms andbusiness cycles are some of the factorswhich may explain the variance in theobserved enterprise-level performanceoutcomes in the post-privatisation period.
4.3 Thirdly, does the assessment ofefficiency gains from privatisation dependon the choice of performance measuresused? Evidence gleaned from Dewenterand Malatesta (2001) suggests that itdoes. In that study two alternate mea-sures of profitability – net income-based measures and EBIT (earningsbefore interest and taxes) based mea-sures were used both in the univariateanalysis and in the multivariate regres-sion. In both cases, profitability wasfound to have significantly improvedin the post-privatisation period in termsof the net income-based measures; but
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not when EBIT- based measures wereused. A similar inconsistency is alsofound in Chibber and Gupta (2017 a).Regression equations estimated in thatstudy to determine the impact ofMemorandum of Understanding(MoU) on the profitability of the SOEsindicated its significantly positiveimpact when Return on Capital (RoC)was used as the proxy; but not whenReturn on Assets (RoA) was used. Thequestion of appropriate choice of theperformance measures has also beendealt in Frydmanetal (1999)’s study ofprivatisation in the transition economicsof Central Europe. In the initial stagesof post-communist transition-which isthe period analysed in that study – theaccounting systems were still in a stateof flux; disclosure standards and mecha-nisms were very imperfect and therewere no dependable measures of the“cost of capital’. In view of these diffi-culties, the researchers considered profitsas an unreliable measure of perfor-mance for the purpose of their study.Accordingly, instead of profitability, thestudy focused on its two components– revenues and costs for which morereliable, comparable data of consistentquality were available. Thus, findingsof the empirical studies may well besensitive to the choice of the performanceindicators/proxies used.
4.4 Fourthly, does the extent ofdivestiture – i.e. whether ‘revenue’ or
‘control’ privatisation8 matter? Findingsof the three seminal cross-country studiesMNR (1994), B&C (1998) and D&M(1999)- indicate that ‘control’ privati-sations bring about significantly greaterperformance improvements than‘revenue’ privatisations. Multi-countrystudy of Aussenegg and Jelic (2007) alsofound that higher government share-holding after privatisation was associa-ted with significantly lower efficiency9.However, Naceur et al. (2007)’s study ofMiddle East and North African (MENA)countries indicated somewhat mixedresults in this regard – though subsamples of control privatisationsperformed significantly better in termsof operating efficiency and output;significant increase in profitabilitywas observed only for the subsampleof revenue privatisations, but not forcontrol privatisations.
Results from the country-specific studieson this issue are also mixed. Studies ofProcianoy and Sobrinho (2001), Weiet al. (2003) confirm that firms inwhich majority stake was transferredexperienced significantly higher effi-ciency gains. A contrarian result was,however, found in Jiang et al. (2009)’sstudy of China in which differencebetween the subsamples of control andrevenue privatisations was statisticallynot significant10. Wu (2007)’s study ofTaiwan also indicated that the extentof government’s shareholding after
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privatization had no significant effecton performance.
Thus, while empirical evidence generallyvalidates stronger impact of controlprivatisation on enterprise performancein the developed countries; in case of theless developed countries the findingsappear to be mixed and inconsistent.
4.5 Fifthly, does the time-periodcovered by the study matter? Timingof privatisation of a SOE can have sig-nificant effects in case the transactionis carried out during a business cycle.Its short-run performance after dives-titure would depend on whether thechange of ownership was effected duringa recessionary phase or a boom phase.Also, sometimes there is a considerabletime-lag between the announcement ofgovernment’s intent to privatise a parti-cular SOE and its actual execution (incase of British Airways the time lag wasas long as 6 years). Furthermore, themanagement of the firms, after privati-sation, require sufficient time to carryout organizational, business portfolioand HR restructuring, to provide newstrategic orientation as well as to makenecessary investment to achieve improve-ment in productivity and efficiency. Forthese reasons, longitudinal coverage ofthe empirical studies of privatisationshould be sufficient both in respect ofthe pre-privatisation and the post-privatisation periods so as to control the
business cycle effects, capture its ‘tem-poral effects’ – the ‘announcementeffect’ and its short-term and long-termeffects. Besides, it should be longenough to assess if the efficiency gainsfrom privatisation are sustained ortapper off over time. If the time horizonselected by the study is too short, effi-ciency effects of privatisation may notbe observed. Villa longa (2000)’s studyempathically brings out this point. Forthe sample of Spanish firms consideredin that study, the positive effects ofprivatisation were found to be statisti-cally significantly only 7-8 years afterthe event. Alexandre and Charreaux(2001)’s study of French privatisationalsocorroborated this finding. Besides, inGarcia and Anson (2007)’s study sig-nificant improvement in performancewas found in the long-run; but not inthe short-run.
4.6 Sixthly, does performance improve-ment precede the actual event of dives-titure in case of the privatised SOEs?Strong evidence of the ‘announcementeffect’ was found in two major studies –Martin and Parker (1995), Boussofianeet al. (1997) and Dewenter and Malatesta(2001). Significant evidence of suchperformance improvement – ‘prepara-tion / announcement effect’ – prior toactual divestiture has also been foundin the studies of Ghosh (2008),Chibber and Gupta (2017 & 2019) andGunasekar and Sarkar (2014) relating
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to India. Interestingly, Dewenter andMalatesta (2001) actually went on tofurther probe whether the performanceimprovement observed in the periodjust before privatisation represented realefficiency gains or ‘creative accounting’or ‘earnings management’11 by theGovernment. Examining long-runmarket-adjusted stock returns of theprivatised firms, the study confirmedthat the improvement in enterpriseperformance observed during theperiod before privatisation represented‘real’ and substantive and not dueto systematic manipulation of theirfinancial reports.
Keeping in view the findings of the studiescited above, it would be instructive toprobe significance of the ‘preparation/announcement effect’ in firm levelempirical studies of privatisation.
4.7 Seventhly, how sensitive is theassessment of privatisation to the methodused? We examine this issue with refer-ence to the studies of Spanish privatisa-tion included in this review. In Garciaand Anson (2007)’s study – whichconsidered a sample of SOEs privatisedduring 1985-2000, performance offirms before and after privatisation wasnot found to be significantly differentwhen industry adjusted averages wereused and the standard MNR (1994)method was applied over the ‘three yearsbefore and three years after’ (t-3 to t+3)
window. In contrast, performanceimprovement after divestiture was foundto be significant for the sample whenthe same method was applied to theunadjusted averages of the proxies. InVillalonga (2000)’s longitudinal study-which used data panel data regressionmodels-changes in both the level andgrowth rate of efficiency after privatisa-tion was found to be statistically insigni-ficant. Accordingly, the hypothesis thatprivatisation increases firm efficiencywas rejected. However, Arocena andOlivera’s (2012) study which examinedthe technical efficiency of a sample ofSOEs, privatised during 1994-2002,vis-à-vis their closest private sectorcompetitors, applying two stage DEA,found significant increase in the effi-ciency of the SOEs after privatisation;while no significant improvement wasobserved in case of their private com-petitors during the same post-privatisa-tion period. Accordingly, their studyfound some support for the claim thatefficiency of the SOEs gets significantlyenhanced after divestiture. Thus, con-clusions of the empirical studies ofprivatisation may substantially vary,even with respect to the SOEs privatisedmore or less during the same period inthe same country, depending on themethod used in the analysis.
4.8 Eighthly, what happens to employ-ment and the workers in the privatisedSOEs? Unarguably, perhaps, this is
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the most politically sensitive dimensionof privatisation as a public policy tool.Evidence with regard to employmentin the SOEs after privatisation is quitemixed. In the earliest empirical studyof privatisation by Galal et al. (1992),workers were found to have gained inten out of the twelve cases analysed –either from appreciation of sharesoffered to them or from higher wages.Findings of the three seminal cross-country studies, however, differ in thisrespect. While MNR (1994) andBoubakri and Cosset (1998) found sig-nificant increase in employment,D’Souza and Megginson (1999) foundsignificant decline in employment afterdivestiture. Evidence from some othermulti-country studies a real so mixed.For example, Aussenegg and Jelic (2007),Cook and Uchida (2004) indicate sig-nificant decline in employment afterprivatisation; whereas Mathur andBanchuenvijit (2007) found no signifi-cant change either for the subsample ofthe developed countries or of the emerg-ing markets. Claessens and Djankov(2000) had observed lower down-sizingof labour in the firms which had beenprivatised for more than 3 years as com-pared to the state owned firms. On theother hand, Frydman et al. (1999)found a contrarian result that privatisa-tion had actually led to improvementin the employment performance of thedivested firms.
Megginson and Netter (2001)’s surveyhad also found singular lack of unanimityof the empirical studies of privatisationregarding its impact on employmentlevels in the divested SOEs. Out of 10studies reviewed in that survey, threehad documented significant increases,in two studies the observed change wasinsignificant; whereas the remainingfive studies had documented significantdecline in employment.
Findings of the single country studiesalso appear to be conflicting and incon-sistent in this regard. Bhaskar and Khan(1995)’s study of privatisation of jutemills in Bangladesh is possibly one ofthe most insightful contribution in thisregard. Results from its ‘difference-in-difference’ (DID) estimation had foundcompelling evidence of significantdecline in “white collar employment”(“clerical and managerial”) and “perma-nent manual workers”; whereas emp-loyment of casual / temporary manualworkers was found to have increasedsignificantly. La Porta and Lopez-de-Silanes (1999) had found significantdecline in the industry-adjusted measureof total employment as well as employ-ment of both white and blue-collarworkers. Okten and Arin (2006)’s studyof Turkey also provides evidence of sig-nificant decline in employment. In con-trast, Wei et al. (2003)’s study of Chinaand Garcia and Anson (2007)’s studyof Spain document no significant change
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in employment. Similarly, estimates ofa computable general equilibrium(CGE) model used by Chisari et.al.(1999) indicate that privatisation didnot seem to be a major contributor ofthe significant increase in unemploymentin Argentina during 1993-95.
Thus, evidence from the empirical studiescovered in this survey with regard tothe impact of privatisation on emp-loyment is fairly mixed. This could bebecause of the interplay of countervailingforces which emanate from labourforce restructuring and rationalisationthat usually follows privatisation. As aresult of this, overall employmentmight expectedly decline in the initialyears. But if the new management suc-ceeds in the initial turn-around efforts,it might invest and expand output oreven diversify, creating more employ-ment opportunities. Thus, after a timelag, overall employment might berestored to the pre-divestiture level oreven higher.
A substantive point, however, thatemerges from these apparently incon-sistent and inconclusive findings is thatwhile analysing the impact of privatisa-tion on employment, the approachneeds to be more granular. Instead ofsimply comparing the aggregate emp-loyment levels before and after divesti-ture; it may be useful also to examinechanges in its composition (i.e. mix of
permanent and casual/temporaryworkers, white and blue collar workers).
Section-5 : Concluding Obser-vationsTo conclude, evidence from empiricalstudies of privatisation, covering deve-loped as well as developing countries,tend to favour a more nuanced view ofits efficiency effects. Nevertheless, thesestudies provide valuable guidance fordesigning future privatisation pro-grammes in countries of South Asia andAfrica, where SOEs still have a signifi-cant economic presence, in particularabout what to privatise (i.e. selectionof the sectors and enterprises), how toprivatise (i.e. the process and methodof divestiture), when to privatise (i.e.timing and sequencing of stake sale) andabove all, about the complementaryreforms to be undertaken to achieve thedesired goals. Given the high politicalsensitivity of privatisation programmesin liberal, open democracies, evidencefrom empirical research is likely tocontribute, in no small measure, to thepublic policy in this field.
Having said that, this survey also bringsout the ‘grey areas’ relating to empiricalprivatisation studies which merit furtherresearch. First, impact of privatisationon employment, particularly in thecontext of labour surplus developingcountries, needs to be explored further
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in the light of mixed evidence providedby the studies covered in this survey.Does it result in an overall reduction inemployment in the firm or lead to more‘casualisation’ and recourse to contractingand outsourcing? Does it worsen labourstandards and conditions of employ-ment? More evidence based research onthese issues is likely to generate valuableinsights and inputs for providing app-ropriate safeguards in the privatisationprogrammes in the developing coun-tries, which would not only be percei-ved ‘fair’ in terms of its welfare conse-quences; but also likely to elicit stron-ger political ‘buy-in’.
Secondly, more empirical studies are alsoneeded on the distributional impact ofthe privatisation programmes in thedeveloping countries, particularly of theutilities and infrastructure sectors. Doesprivatisation of firms in these sectorshave adverse effects on the welfare ofthe consumers in terms of higher pricesand service quality, even though it mighthave had positive impact on theirfinancial and operating performance?Does it affect equitable access to ser-vices? Does privatisation yield ‘positive-sum outcomes’ for the major stake-holders? Again robust empirical evi-dence on these contentious and politi-cally sensitive issues would contributesubstantially towards our understand-ing of the likely equity-efficiency trade-offs of the divestiture programmes.
Third, there is a need for more casestudies, of both ‘successful’ and ‘failed’privatisation, in order to deepen ourunderstanding of when privatisation‘works’ and when it does not; where(sectors and industries) it ‘works’ andwhere it does not; and why and how it‘works’ in some cases and not in othercases. Also, does privatisation workmore effectively in the developingcountries in sectors and industries thatare less “institutions-intensive” as com-pared to sectors where existence ofstrong and empowered autonomousregulatory institutions is critical? Whileeconometric studies produce evidencethat enables derivation of more gene-ralizable findings; they often tend tomiss out rich institutional details whichemerge from in depth case studies. Forinstance, why privatisation of HindustanZinc- a Central Public Sector Enterprise(CPSE) of India privatised in 2002-03is acknowledged to be a ‘success’ andwhy sale of Jessop & Co. another CPSEprivatised around the same time in thesame economic environment- did not‘succeed’? Case study approach isarguably well suited to answer andexplain many such issues which havecritical policy implications.
Further research to explore these issuesis not merely of academic interest; ithas more substantive value from the
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public policy perspective to enlightenresponsible policy makers more holis-tically not only about the efficiencyeffects of privatisation; but also aboutits equity and welfare consequences.
Notes :1. Privatisation Barometer, an agency which
provides privatisation data to OECD andWorld Bank, defines privatisation as “atransfer of ownership or voting rights fromthe ‘state’ to the private sector”.
2. As reported in in The Telegraph, April 8th,2013. Also see Edwards (2017) onMrs. Thatcher’s privatisation legacy.
3. Megginson (2016) in The PBR 2015/16.
4. Extracted from Para 99 of the speech of theUnion Finance Minister presenting UnionBudget for FY 2019-20. Para 97, 98 and100 of the speech also reaffirm the renewedpolicy thrust of the Government of Indiato scale up strategic disinvestment of theCentral Public Sector Enterprises (CPSEs).
5. For “Agency/Property Rights Theory”please refer to Alchian (1965), De Alessi(1980), Shapiro and Willig (1990) andLaffont and Tirole (1993). For “PublicChoice Theory” see Zeckhouser and Horn(1989) and Haskel and Szymanski (1992).For “Organisation Theory” see Perry andRinsey (1988) and Walker and Vasconcellos(1997).
6. Galal et al. (1994) is the only studycovered in this survey which has used casestudy method.
7. Chisari et al. (1999) have used a ComputableGeneral Equilibrium (CGE) model to esti-mate the macroeconomic and distributionaleffects of privatisation of privatisation ofutilities in Argentina.
8. Megginson et. al.(1994) distinguish bet-ween ‘revenue’ and ‘control’ privatisation.‘Control’ privatisation refers to sale sharesby the Government of a SOE to privateentities which lowers its stake below 50 percent thereby ceding control of management.‘Revenue’ privatisation refers to cases wheregovernment ‘simply sold a minority stake toprivate investors” primarily to raise revenuewithout having to cede control rights.
9. Results of Boardman and Vining (1989)similarly suggest that partial privatisationmay not be the optimal strategyfor governments which wish to reducedependence on SOEs.
10. As explained in the study of Jiang et. al.(2009), however, even in the firms of theirsample in which government diluted itsownership below 50 per cent, it stillremained as the largest and ‘controlling’shareholder. Thus, in their sample there was,in effect, no difference between the ‘revenue’and ‘control’ privatisation in terms ofgovernment’s control rights in the divestedfirms, which might be a probable explana-tion of why the extent of divestiture didnot make a difference in their study.
11. The study examined whether governmentmight have resorted to manipulation of thefinancial reports of the firms selected forprivatisation – inflating their earnings beforeprivatisation systematically in order tomislead the prospective investors and makethe firms ‘attractive’ for sale.
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Corporate Governance Practices and itsImpact on Non-Performing Assets ofSelected Commercial Banks in India
S.K.Chaudhury* & Devi Prasad Misra**
When India is marching ahead for larger market presence with the liberalized business, theIndian banks are today facing greater challenge of realization of Non-Performing Assets(NPAs). Due to enormous increase in the NPAs level of banks, i.e. non-performance of aportion of loan portfolio, has becomes a daunting task before them to recover the same. Asa result, not only the performance of banks goes awry but also has an adverse effect on theIndian economy. NPAs are now considered as burden on the Indian banking industry.Hence, the methods/procedure of managing NPAs and keeping them within the tolerancelevel is the need of the hour. This research study tries to focus on the Corporate Governanceaspect as an appropriate tool to bring down the mounting NPAs in Indian banks. For thispurpose, the statistical tools such as correlation and regression analysis are used to i) ascertainwhether there exists the correlation between corporate governance measures and NPA ratioof public and private sector banks in India and ii) to determine the impact of corporategovernance practices on NPAs in Indian public and private sector banks. The findings ofthe study reveal that there is no correlation between corporate governance measures andNPA ratio in public sector and private sector banks. Further, the regression analysis revealsthat there is no impact of corporate governance practices on NPAs in public sector andprivate sector banks.
Keywords : Asset Quality, Bad Loans, Corporate Governance, Non-Performing Assets
IntroductionThe evaluation of the Indian bankingindustry during the pre-liberalization erarevealed the presence of several short-comings such as reduced productivity,deteriorated asset quality and efficiencyand increased cost structure due to tech-nological backwardness. Among thesedeficiencies, policy makers identifiedthe erosion of asset quality as the most
The Journal of Institute of Public Enterprise, July-Dec, Vol. 42, No. 2ISSN : 0971-1864, © 2019.
* Dr.S.K.Chaudhury, Faculty Member, Depart-ment of Business Administration, BerhampurUniversity, Berhampur, Odisha, India.
** Prof.Devi Prasad Misra, Professor, Departmentof Business Management, F.M.University,Balasore, Odisha, India.
significant obstacle for the developmentof a sound and efficient banking sector.In fact, the various practices that werefollowed during pre-liberalizationperiod that includes asset classification
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using health code system, accrual basisused to book interest in bank accountsetc., concealed the gravity of asset qualityissues of the banking sector. The assetquality is a prime concern and impactsvarious performance indicators, i.e.,profitability, intermediation costs,liquidity, credibility, income generatingcapacity and overall functioningof banks. The reduction in assetquality results in accumulation ofnon-performing assets.
In the recent past, non-performing assetshas become a matter of great concernfor the Indian bankers. The bankingsector’s asset quality was worsened inthe recent years, with Gross Non-Per-forming Assets (GNPAs) ratio crawlingto 4.45 per cent as on March 2015, asagainst 4.1 per cent in March 20141, asper the latest data released by theReserve Bank of India. Both gross andnet NPAs ratios2 are strong indicators ofthe asset quality of a bank; the higherthe gross/net NPA ratio, the lower its assetquality and vice-versa. In this context,private sector banks remain within thecontrolled limits, and importantly,seem to have provision enough to keepnet NPAs within 1 per cent. But thepublic sector banks, sadly, have not3.
Statement of the ProblemThe need for corporate governancewhich emerged as a result of corporatefailures/bank failures as well as wide
spread dissatisfaction in the way manysuch institutions function, has becomeone of the wide and deep discussionsacross the globe. Non-performingassets is a key concern for banks in India.NPA is said to be an important indicatorto judge the health of the bankingindustry. During the last one decade,the public sector banks have displayedexcellent performance and are one stepahead of private sector banks in finan-cial operations. However, the onlyproblem with public sector banks is theincreasing level of NPA year after year.In this connection, the application ofcorporate governance can be a potentialtool to contain NPAs of banks becausethe corporate governance primarily centreson complete transparency, integrity andaccountability of the management.Further, it focuses on investors’ protec-tion and public interest. Apart fromthat, corporate governance is concernedwith the values, vision and visibility. Inview of the above issues, a thoughtprovoking ideas need to be diagnosedand implemented for better governanceand to make the banking sector moredynamic and vibrant so that it can takecare of the interest of various stakeholders.In this research article, an attempt hasbeen made to examine whether thereexist any correlation between corporategovernance practices and the NPAs ofbanks and also to find out the impactof corporate governance practices onNPAs of banks.
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Review of Select LiteratureThe review of literature is an integralpart of the research work. Review ofpast studies primarily reveals the researchworks done by individual researchersand institutions and also facilitates tocreate the base for further research.Various studies related to corporategovernance, particularly in bankingsector have been carried out by manyscholars on different aspects at nationaland international level. However, someof the notable research works carriedout in this area is noted below.
Indian ContextBalasubramaniam (2001) in his workon non-performing assets and profita-bility of commercial banks in Indiastressed on the point that the level ofNPAs is high with all banks and thebanks are supposed to bring it down.He suggested that effective internalcontrol systems, good credit appraisalprocedures, along with the improve-ment in asset quality in the balancesheets have the potential to bring downNPA in banking sector. Bhabani andVeena (2011) reveals that the publicsector banks, which are perceived as thefoundation of the Indian banking sys-tem, are unfortunately burdened withexcessive NPAs, huge manpower andlack of advanced technology. Chaudharyand Sharma (2011) in their comparativestudy on the performance of Indian
public and private sector banks statedthat it is high time to take appropriateand stringent measures to get rid ofNPA problem. An efficient Manage-ment Information System (MIS) shouldbe developed whose task is mainly totrain the bank staff involved in sanc-tioning the loans and advances withproper documentation and charge ofsecurities. The bank staff should bemotivated to take methods to preventadvances turning into NPA. Moreover,they suggested that public sector banksshould pay adequate attention on theirfunctioning to compete with privatesector banks. Zafar, Maqbool andKhalid (2013) opine in their study thatin Indian banking system, public sec-tor banks are worst affected by NPAs.NPAs reflect the poor performance ofbanks and its failure adversely affectstheir banking sector’s health. Josephand Prakash (2014) suggested thatfinancial institutions particularly thebanks should be proactive to adopt apractical and structured non-perform-ing assets management system whereprevention of NPA should be accordedthe top priority. They also added thatthe NPA level is much higher in publicsector banks in India as compared tothe private banking sector and foreignbanks. They also suggested that thepublic sector banks should take utmostcare and avoid loan/advances leading toNPA by taking suitable preventive
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measures in an efficient way. Goel andSahu, et al. (2017) point out that themain reason of poor performance ofmany banks in recent past was thenon-performing assets of the banks.They further add that corporate gover-nance and non-performing assets areinter-related and serious research shouldbe done to find out the relationbetween corporate governance andnon-performing assets.
Global ContextBerger et al. (2005) in their studyviewed that state-owned banks havepoor long-term performance (staticeffect), those undergoing privatizationhad particularly poor performancebeforehand (selection effect), and thesebanks dramatically improved follow-ing privatization (dynamic effect),although much of the measuredimprovement is likely due to placingnon-performing loans into residualentities. Ennobakhare (2010) inspectedthe relationship between corporategovernance practices and its impact onprofitability and found that there wasa significant relationship between banksoperation and the corporate governancepractices. They also proved that theownership style of banks has significantimpact on the size of NPA in banks.
Bebeji (2010) conducted a study tofind out the impact of different creditmanagement strategies on NPA andsuggested that poor management,ineffective monitoring of debts inaddition to liberal credit policy arehaving good relation with corporategovernance practices. They are also sig-nificantly related to non-performingloans. Nyor and Mejabi (2013) in theirresearch on the effect of corporate gov-ernance practices on non-performingloans of Nigerian banks concluded thatcorporate governance variables likeboard size, board composition, compo-sition of audit committee and powerseparation do not have significantimpact on NPA. Moreover, they saythat these variables cannot be reliedupon to solve the problem of NPAmanagement. They suggested that thebanks should shift the focus from theexplanatory variables to other corporategovernance related variables like trans-parency, insider abuse, disclosure prac-tices and accountability. HifzaInamand Aqeel Mukhtar (2014) stated thatgood corporate governance aids inimproving the quality of assets. As theoperational efficiency of a bank isappraised in terms of amount of non-performing assets and default loans, thebanks are required to effectively manageits non-performing loans. Goodcorporate governance helps to efficientlymanage non-performing assets of a
The Journal of Institute of Public Enterprise, July-Dec, Vol. 42, No. 2© 2019, Institute of Public Enterprise
82
bank. Thus, there is positive linkbetween corporate governance andoperational efficiency. Paul and Simon(2014) stated that the corporate gover-nance variable like board size, boardcomposition, composition of auditcommittee and power separation arenot the factors responsible for the risingfigure of non-performing assets ofNigerian Banks. Hence, they suggestedgiving focus on the key variables likeinsider abuse, transparency andaccountability and so on for betterperformance of the banks.
Objectives and Scope of the StudyThe study outlines the followingobjectives for the present research work.
• To examine whether there is anyimprovement in the corporategovernance practices of selectedIndian banks over the last five yearsand if yes, then does it have anyimpact on the NPA of such banks?
• To explore the relationship betweencorporate governance practicesand NPA ratios in selected Indianpublic and private sector banks.
• To assess the impact of corporategovernance practices on non-performing assets in Indian publicand private sector banks.
The scope of the study is limited topublic and private sector banks only.
The foreign banks are excluded fromthe study.
Hypotheses of the StudyIn the backdrop of above objectives,following hypotheses have beenformulated by the researchers.
1. H0 = There is no significant correlationbetween corporate governance andNPA of public sector banks.
2. H0 = There is no significant correlationbetween corporate governance andNPA of private sector banks.
3. H0 = There is no significant impactof corporate governance practices onNPA ratio in Indian public sectorbanks.
4. H0 = There is no significant impactof corporate governance practices onNPA ratio in Indian private sectorbanks.
MethodologyThe study is empirical in nature. Datapertaining to the study were collectedfrom secondary sources and analysedthrough SPSS package version (21).For this purpose 12 sample banks, 6each from public and private sectors arerandomly selected. Public sector banksinclude State Bank of India, Bank ofBaroda, Punjab National Bank, Bankof India, Central Bank of India andUnited Bank of India. Similarly,
Corporate Governance Practices and its Impact on Non-Performing Assets ofSelected Commercial Banks in India
83
private sector banks namely, FederalBank, ICICI bank, HDFC bank,Kotak Mahindra Bank, IndusInd Bankand Axis Bank are included as samplesfor the study. The period of study covers6 years i.e. from 2010-11 to 2015-16.
Net NPA ratios are calculated usingrelevant data collected from RBI reports.To calculate the average weighted cor-porate governance score of the samplebanks, 59 point rating scale was com-piled referring different score cards usedby different researchers, committees oncorporate governance and its practicesas mentioned in the annual reports ofIndian public and private sector banks.Binary feeding method was adopted toassign scores against each of the itemsin the scale. In other words, if a parti-cular practice mentioned in the scale isfollowed by the concerned bank andthe same is reflected in its annual reportthen ‘1’ was assigned otherwise ‘0’ wasassigned. Then sum was calculated andthen divided by 59 to obtain the weightedcorporate governance score. Further,statistical tools namely correlationanalysis and regression analysis wereapplied to find out i) whether thereexists the correlation between corporategovernance measures and NPA ratio ofselected public and private sector banksin India and ii) the impact of corporategovernance practices on NPAs suchbanks.
Data Analysis and InterpretationNet NPA ratio of the sample banks aresourced from the RBI reports. Corpo-rate governance scores of public andprivate sector banks are calculated byusing the 59 point scale as discussed inthe methodology. The weightedcorporate governance score close to ‘one’indicates higher corporate governancemeasures taken up by the bank andscore closer to ‘zero’ indicates lowcorporate governance measures takenup by sample banks in both the groups.
The compiled data (net NPA ratiosand weighted corporate governancescores) are presented in the Tables inthe next page. Table-1 and Table-2present the computed data pertainingto weighted average corporate gover-nance score and net NPAs ratio ofsample public sector and privatesector banks respectively.
Relationship between Mean NetNPAs and Average WeightedCorporate Governance ScoresWith a view to ascertaining the relation-ship between net NPA ratios andweighted average corporate governancescores, correlation analysis has beenperformed separately for both publicand private sector banks and they arepresented in the succeeding section.
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Tab
le-1
: N
et N
PA R
atio
s an
d W
eigh
ted
Ave
rage
Cor
pora
te G
over
nanc
e Sc
ores
of
Publ
ic S
ecto
r B
anks
Nam
e of
SBI
B
oB
PN
B
B
oI
C
B
U
BI
Avg
.A
vg.
the
Ban
kN
PAW
eigh
-
Net
Wei
gh-
Net
Wei
ghN
etW
eigh
-N
etW
eigh
-N
etW
eigh
-N
etW
eigh
-R
atio
ted
CG
Y
ear
NPA
ted
CG
NPA
ted
CG
NPA
ted
CG
NPA
ted
CG
NPA
ted
CG
NPA
ted
CG
(Sam
ple
Scor
e
Rat
ioSc
ore
Rat
ioSc
ore
Rat
ioSc
ore
Rat
ioSc
ore
Rat
ioSc
ore
Rat
ioSc
ore
Ban
ks)
(Sam
ple
Ban
ks)
2010
-11
1.63
0.62
70.
350.
593
0.85
0.67
80.
910.
559
1.10
0.61
01.
190.
780
1.00
50.
641
2011
-12
1.82
0.66
10.
540.
610
1.52
0.69
51.
470.
576
1.46
0.62
71.
700.
797
1.41
80.
661
2012
-13
2.10
0.67
81.
280.
644
2.35
0.74
62.
060.
610
2.18
0.64
41.
610.
797
1.93
00.
686
2013
-14
2.57
0.69
51.
520.
627
2.85
0.74
62.
000.
593
1.98
0.64
42.
330.
814
2.20
80.
686
2014
-15
2.12
0.69
51.
890.
644
4.06
0.76
33.
360.
610
2.65
0.64
42.
710.
831
2.79
80.
698
2015
-16
3.81
0.69
55.
060.
644
8.61
0.76
33.
350.
610
6.42
0.64
45.
250.
831
5.41
60.
697
Sour
ce :
RB
I re
port
s (N
PA) a
nd A
utho
rs’ co
mpi
latio
n (C
orpo
rate
Gov
erna
nce
scor
es) f
rom
Ann
ual r
epor
ts of
ban
ks.
Corporate Governance Practices and its Impact on Non-Performing Assets ofSelected Commercial Banks in India
85
Tab
le-2
: N
et N
PA R
atio
s an
d W
eigh
ted
Ave
rage
Cor
pora
te G
over
nanc
e Sc
ores
of
Priv
ate
Sect
or B
anks
Nam
e of
FB
ICIC
I
H
DFC
KM
B
I
ND
US
IND
AX
ISA
vg.
Avg
.
the
Ban
kN
PAW
eigh
-
Net
Wei
gh-
Net
Wei
ghN
etW
eigh
-N
etW
eigh
-N
etW
eigh
-N
etW
eigh
-R
atio
ted
CG
Y
ear
NPA
ted
CG
NPA
ted
CG
NPA
ted
CG
NPA
ted
CG
NPA
ted
CG
NPA
ted
CG
(Sam
ple
Scor
e
Rat
ioSc
ore
Rat
ioSc
ore
Rat
ioSc
ore
Rat
ioSc
ore
Rat
ioSc
ore
Rat
ioSc
ore
Ban
ks)
(Sam
ple
Ban
ks)
2010
-11
0.60
0.76
31.
110.
678
0.19
0.67
80.
590.
576
0.28
0.81
40.
260.
695
0.50
50.
701
2011
-12
0.53
0.78
00.
730.
695
0.18
0.69
50.
510.
593
0.27
0.84
70.
250.
712
0.41
20.
720
2012
-13
0.98
0.78
00.
640.
712
0.20
0.71
20.
550.
610
0.31
0.84
70.
320.
712
0.50
00.
729
2013
-14
0.74
0.81
40.
820.
695
0.27
0.69
50.
880.
610
0.33
0.84
70.
440.
729
0.58
00.
732
2014
-15
0.73
0.79
71.
400.
695
0.25
0.69
50.
790.
627
0.31
0.83
10.
460.
712
0.67
80.
726
2015
-16
1.64
0.79
72.
670.
695
0.28
0.71
20.
930.
627
0.36
0.83
10.
730.
712
1.1
010.
726
Sour
ce :
RB
I re
port
s (N
PA) a
nd A
utho
rs’ co
mpi
latio
n (C
orpo
rate
Gov
erna
nce
scor
es) f
rom
Ann
ual r
epor
ts of
ban
ks.
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Table-3 : Public Sector Banks
Mean Net NPA Ratio Weighted Average CGof Sample Public Score of Sample Public
Sector Banks Sector Banks
Mean Net NPA Ratio Pearsonof Sample Public Correlation 1 .722Sector Banks Sig. (2-tailed) .106
N 6 6
Average Weighted CG PearsonScore of Sample Public Correlation .722 1Sector Banks Sig. (2-tailed) .106
N 6 6
* Correlation is significant at the 0.05 level (2-tailed).
From Table-3, it is evident that Pearson’sr = 0.722 (p value = 0.106) which is notsignificant and hence, the null Hypo-thesis 1 is accepted. It indicates thatthere is no significant relationshipbetween net NPA ratio and weightedaverage corporate governance score ofpublic sector banks. Even though the
correlation is not significant but theyhave positive relationship.
From Table-4, it is seen that Pearson’sr = 0.269 (p value = 0.606) which is notsignificant and hence, null Hypothesis2 is accepted. It implies that there is nostatistically significant relationship
Table-4 : Private Sector Banks
Mean Net NPA Ratio Weighted Average CGof Sample Private Score of Sample Private
Sector Banks Sector Banks
Mean Net NPA Ratio Pearsonof Sample Private Correlation 1 .269Sector Banks Sig. (2-tailed) .606
N 6 6
Average Weighted CG PearsonScore of Sample Private Correlation .269 1Sector Banks Sig. (2-tailed) .606
N 6 6
Corporate Governance Practices and its Impact on Non-Performing Assets ofSelected Commercial Banks in India
87
between NPA ratio and weighted ave-rage corporate governance score ofprivate sector banks. In this case also, eventhough the correlation is not significantbut they have positive relationship.
Impact of Corporate GovernancePractices on Net NPAs RatioTo examine the impact of corporategovernance practices on net NPA ratioof banks, regression analysis is used byconsidering mean net NPA ratio ofsample banks as dependent variable andweighted average corporate governancescore of sample banks as independentvariable. Regression analysis is per-formed separately for both public andprivate sector banks and the results arementioned below.
Regression Analysis : PublicSector BanksThe value of R2 equals 0.521 (Table-5),indicates that 52.1 percent of the varia-tions in net NPA ratio in public sectorbanks is accounted for its weighted ave-rage corporate governance score. Inother words, net NPA ratio in publicsector banks is moderately influencedby weighted average corporate gover-nance score. However, the value of R2
equals 0.521 is not significant (at 5 percent level) as indicated by p value(0.106) of F statistics4 as obtained inAnova Table. It indicates poor goodnessof fit of the model. Hence, Hypothesis 3is accepted. It means there is no signifi-cant impact of corporate governancepractices on NPAs in selected publicsector banks in India.
Table-5 : Model Summary
Model R R Square Adjusted R Square Std. Error of the Estimate
1 .722a .521 .401 1.2190847
a. Predictors : (Constant), Weighted average corporate governance score of sample public sector banks.
Table-6 : Anovaa
Model Sum of Squares Df Mean Square F Sig.
Regression 6.445 1 6.455 4.343 .106b
1 Residual 5.945 4 1.486
Total 12.399 5
a. Dependent Variable : Mean Net NPA ratio of sample public sector banks.b. Predictors : (Constant), Weighted average CG score of sample public sector banks.
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The estimated regression equation asobtained in Table-7 may be written as :
Net NPA ratio = -31.678 +50.343*AWCG
t = (-1.933) (2.084)
Regression Analysis : PrivateSector BanksThe value of R2 equals 0.072 (Table-8),which indicates that only 7.2 per cent
of the variations in net NPA ratio isaccounted for weighted average corpo-rate governance score in private sectorbanks. In other words, net NPA ratioin private sector banks is not significantlyinfluenced by its weighted average cor-porate governance score. The value ofR2 equals 0.106 is not significant (at 5 percent level) as indicated by p value (0.606)of F statistics5 and obtained in AnovaTable. It also indicates low goodness of
Table-7 : Coefficientsa
Unstandardized Standardized Model Coefficients Coefficients T Sig.
B Std. Error Beta
(Constant) -31.678 16.390 -1.933 .125
1 Weighted Average CGScore of Sample Public 50.343 24.156 .722 2.084 .106Sector Banks
a. Dependent Variable: Mean net NPA ratio of sample public sector banks
Table-8 : Model Summary
Model R R Square Adjusted R Square Std. Error of the Estimate
1 .269a .072 -.159 .2666751
a. Predictors : (Constant), Weighted average corporate governance score of sample public sector banks.
Table-9 : Anovaa
Model Sum of Squares Df Mean Square F Sig.
Regression .022 1 .022 .313 .606b
1 Residual .284 4 .071
Total .307 5
a. Dependent Variable : Mean Net NPA ratio of sample public sector banks.b. Predictors: (Constant), Weighted average CG score of sample public sector banks.
Corporate Governance Practices and its Impact on Non-Performing Assets ofSelected Commercial Banks in India
89
fit of the model. Hence, Hypothesis 4is accepted. That means there is nosignificant impact of corporate gover-nance practices on NPAs in selectedprivate sector banks in India.
The estimated regression equation asobtained in Table-10 may be writtenas :
Net NPA Ratio = -3.677 +5.962AWCG
t = (-0.477) (0.559)
From the foregoing analysis, it is revea-led that there is no statistically signifi-cant relationship between the net NPAsratio and weighted average corporategovernance score of both the selectedpublic and private sector banks. Simi-larly, the regression analysis indicatesthat weighted average corporate gover-nance practices do not have any impacton NPAs in both public and privatesector banks. It is quite surprising thatthe implementation of corporategovernance measures is not resulting in
minimization of NPAs ratio6 in Indianpublic and private sector banks.
Limitation and Future Scope ofthe StudySo far as the limitations are concerned,the sample size taken for this researchwork is limited to six public and sixprivate sector banks. The foreign banksare excluded from the study. The dataconsidered for the study is only six yearsonly. Study conducted with largesample size and data long time periodmay yield different results. Further, thescale developed to measure corporategovernance score is limited to 59 pointscale. Inclusion of more items incorporate governance score card mayproduce different results.
Future studies may be conducted byincluding more public, private and for-eign banks in the list of sample size.Apart from this, NPA data of a longtime frame say 10-15 years may betaken up for obtaining accurate resultand inference.
Table-10 : Coefficientsa
Unstandardized Standardized Model Coefficients Coefficients T Sig.
B Std. Error Beta
(Constant) -3.677 7.704 -.477 .658
1 Weighted Average CGScore of Sample Public 5.962 10.664 .269 .559 .606Sector Banks
a. Dependent Variable: Mean net NPA ratio of sample public sector banks.
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Suggestions and ConclusionIn the last few years, Indian bankingsector has witnessed high volume ofNPAs. Now managing bad loans andcontrolling and keeping them at lowerlevel has become imperative for thebanking industry. The analysis revealsthat corporate governance measures didnot bring any desired result in control-ling the NPA in Indian commercialbanks. To reduce the level of NPAs inthe loan portfolio, comprehensive pre-ventive monitoring mechanism has tobe explored. Further, there should amechanism to maintain a sound andhealthy loan portfolio. The approachto NPA management by the banks hasto be multipronged, necessitating variedstrategies suitable to different stages ofthe passage of credit. Every commercialbank has to embark upon strategic planto prevent/control the occurrence of theNPAs. An enduring solution to theproblem of NPAs can be attained onlyby adopting clear-cut policy guidelinesin respect of credit appraisal withminute, proper assessment of credit andrisk management mechanism alongwith credit rating of the potential bor-rower. Indian bankers may go for theabove suggestive measures in orderto achieve and maintain a lower NPAratio.
ReferencesBalasubramaniam, C.S. (2001) “Non-Perform-
ing Assets and Profitability of CommercialBanks in India : Assessment and Emergingissues”, Abhinav Journal, Vol.1, Issue 7,pp.91-103.
Bebeji, A. (2010) “An Accessment of CreditManagement Strategies and Non-Perfor-ming Loans of Banks in Nigeria”, Paperpresented at a maiden annual conference,organised by School of Business andFinancial Studies, Kaduna Polytechnic.
Berger, N.A., Clarke, G., Cull, R., Klapper, L. &Udell, G.F. (2005) “Corporate Governanceand Bank Performance : A Joint Analysis ofthe Static, Selection and Dynamic Effectsof Domestic, Foreign and State Ownership’’,Journal of Banking & Finance, Vol.29,No.8-9, pp.2179-2221.
Bhabani Prasad, G.V. & Veena, D. (2011)“NPAs Reduction Strategies for Commer-cial Banks in India”, International Journalof Management & Business Studies, Vol.1,Issue 3, pp.47-53.
Chaudhary, K. & Sharma, M. (2011) “Perfor-mance of Indian Public Sector Banks andPrivate Sector Banks : A ComparativeStudy”, International Journal of Innovation,Management and Technology, Vol.2, No.3,pp.45-58.
Enobakhre, A. (2010) “Corporate Governanceand Bank Performance in Nigeria”, MBAResearch Report, University ofStellenbossch, Retrived from: http://hdl.handle.net/10019.1/8439.
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Goel, I. (2014) “Impact of Corporate Gover-nance on Non-Performing Assets in Banks”,ZENITH International Journal of BusinessEconomics & Management Research, Vol.4,No.3, pp.15-28.
HifzaInam & Aqeel Mukhtar (2014) “Corpo-rate Governance and its Impact on Perfor-mance of Banking Sector in Pakistan”,International Journal of Information,Business and Management, Vol.6, No.3,pp.106-117.
Joseph, A.L. & Prakash, M. (2014) “A Study onAnalyzing the Trend of NPA Level in PrivateSector Banks and Public Sector Banks”,International Journal of Scientific andResearch Publications, Vol.4, No.7, pp.1-9.
Nworji, I.D., Adebayo, O. & Adeyanju, O.D.(2011) “Corporate Governance and BankFailure in Nigeria : Issues, Challenges andOpportunities”, Research Journal of Financeand Accounting, Vol. 2, No.2, pp.24-37.
Paul, A.A. & Simon, K.M. (2014) “The Impactof Corporate Governance Variables onNon-performing Loans of Nigerian DepositMoney Banks”, Asian Economic and Finan-cial Review, Vol.4, No.11, pp.1531-1544.
Sahu, M. M. K., Maharana, N. & Chaudhury,S. K. (2017) “Impact of CorporateGovernance Practices on Non-PerformingAssets (NPA) Management in IndianPublic and Private Sector Banks”, PacificBusiness Review International, 10(4),67-79.
Siraj, K.K. (2014) “A Study on Non-Perform-ing Assets of Public Sector Banks in Indiawith Special Reference to State Bank ofTravancore”, Ph.D Thesis, Submitted toSchool of Management Studies, CochinUniversity of Science and Technology.
Terzungwe, N, & Simon, K.M. (2013)“Impact of Corporate Governance on Non-Performing loans of Nigerian DepositMoney Banks”, Journal of Business andManagement, Vol.2, No.3, pp.12-21.
Zafar, S.M.T., Maqbool, A. & Khalid, S.M.(2013) “Non-Performing Assets and itsImpact on Indian Public Sector Banks”,International Journal of Marketing,Financial Services & Management Research,Vol.3, No.2, pp.68-87.
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Persistence in Performance of IndianMutual Fund Schemes : An Evaluation
Joyjit Dhar* & Kumarjit Mandal**
Persistence refers to the ability of a fund to maintain its relative performance ranking overtime In the prospectus pertaining to mutual funds is very common to found the phrase that“past performance is not an indicator of future performance”. On the other hand, investorsexpect a consistent return on their investments and persistence of performance is of course agreat concern for them. The fund managers also try to maintain their good performanceand try to improve it when it is below satisfactory level. This is because, on the one hand, itis related to their compensation package and on the other, it is extremely difficult to sell amutual fund scheme that has poor track record. From an academic perspective, the existenceof performance persistence actually challenges semi-strong form of the Efficient MarketHypothesis (Fama, 1970). In this backdrop, the present study attempts to address the issueof ‘persistence’ in equity mutual funds in India across two different time horizons withrespect to three different performance measures applying a non-parametric contingencytable approachand the Spearman rank correlation coefficient (SRCC) test. The resultsindicate that though there is some evidence of short-run performance persistence in theIndian mutual funds marketthere is no long-run performance persistence during the periodunder consideration. Thus, on the whole this analysis suggests that past performance ofmutual funds cannot be used as indicators of future performance.
Keywords : Mutual Funds, Performance Persistence, Contingency Table, EfficientMarket, Spearman Rank Correlation Coefficient (SRCC) Test
IntroductionIn the performance evaluation literature,persistence refers to the ability of afund to maintain its relative perfor-mance ranking over time. In the mutualfunds prospectus it is very common tofound the phrase that “past performanceis not an indicator of future perfor-mance”. However, investors expect a
The Journal of Institute of Public Enterprise, July-Dec, Vol. 42, No. 2ISSN : 0971-1864, © 2019.
* Dr.Joyjit Dhar, Associate Professor of Economics,West Bengal Education Service (W.B.E.S.)Government of West Bengal, A.B.N.SealCollege, P.O. Coochbehar, Dist.-Coochbehar,PIN- 736101, West Bengal, India.
** Dr.Kumarjit Mandal, Associate Professor ofEconomics, Department of Economics,University of Calcutta, 56A, BarrackporeTrunk Road, Kolkata-700050, West Bengal,India.
Persistence in Performance of Indian Mutual Fund Schemes :An Evaluation
93
consistent return on their investmentsand persistence of performance is ofcourse a great concern for them. Patel,Zeckhauser and Hendricks (1992) haveshown that investors keep their moneyto funds which are superior performersin recent times. Both individual andinstitutional investors are looking intothe performance evaluation methodswhich will ultimately help them to selectthose funds which are superior per-formers. The fund managers also try tomaintain their good performance andtry to improve it when it is belowsatisfactory level. This is because, on theone hand, it is related to their compen-sation package and on the other, it isextremely difficult to sell a mutualfund scheme that has poor track record.From an academic perspective, theexistence of performance persistenceactually challenges semi-strong form ofthe Efficient Market Hypothesis (Fama,1970). This form of market efficiencystates that history of past prices cannotbe used to predict future performances,while persistence in performanceactually means predictive ability of thefund managers. According to Grossmanand Stiglitz (1980) security pricesshould not reflect the full informationpossessed by the informed individuals.There must be a reward for the investorsfor their costly endeavor of seeking newinformation. In the context of mutualfund performance evaluation some
mutual fund managers are expec-ted to have an informational advantage.Berk and Green (2004), however hasshown theoretically that such an infor-mational advantage will be temporarywhen the investors direct their capitalto recent winners, thus making theindustry competitive. The objective ofthis study is to determine empiricallyif such managerial ability persists overa time horizon.
Several studies have examined persis-tence in fund performance and havefound a ‘hot hands’ phenomenon. Forexample, Hendricks et al. (1993) andGoetzmann and Ibbotson (1994) haveshown that past mutual fund returnspredict future returns. This type ofevidence is not only inconsistent withefficient markets, which advocates thatpast performance cannot be a guide tofuture performance, but also influencesinvestors by suggesting that they mayrealize superior returns by purchasingfunds which have performed wellrecently. Malkiel (1995) found evidenceof persistence in the 1970s which weredisappearing in the 1980s. However,Gruber (1996) found very strongevidence of persistence looking at equitymutual funds from 1985 to 1994 andargued that persistence affected thegrowth of active mutual funds duringthis period. Studies of Brown andGoetzmann (1995), Wermers (1997),Carhart (1997) and Droms and Walker
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94
(2001) found evidence of short-termpersistence in mutual funds. Otten andBams (2002) evaluated the perfor-mance persistence of 506 funds of fiveEuropean countries such as U.K., France,Germany, Italy and Netherlands.Their results indicated that mostEuropean funds provide only weakevidence of persistence in performance,except U.K. Babalos et al. (2008)examined the performance persistenceof domestic equity funds in Greece.They argued that persistence is evidentfor specific periods and it was notsignificant for the overall sample period.Grinblatt and Titman (1992), Elton et al.(1996), Volkman and Wohar (1996),Allen and Tan (1999), Filip (2011)observed persistence over longer periods.On the other hand, Jensen (1968),Kritzman (1983), Dunn and Theisen(1983), Elton et.al (1990), Bauer et al.(2006), Casarin et al. (2008), Barras(2010), Fama and French (2010),Busse et al. (2010) had evidence of littleor no evidence of persistence in the per-formance of mutual funds. Thus, theavailable studies mentioned earlierpresent contrasting results and hence atbest, be called inconclusive.
The issue of performance persistence ofIndian mutual funds is not adequatelyaddressed in the academic literature.While Roy and Deb (2003) foundsignificant evidence of persistence, thestudy made by Guha Deb (2006)
revealed moderate evidence of short-term performance persistence. Sehgaland Jhanwar (2008) showed no evidenceof persistence for monthly data butfound evidence of persistence usingdaily data for only one model. However,the study of Mondal and Khan (2014)has shown no evidence of persistencefor both short-run and long-run timeperiods. Thus, there is no conclusiveevidence so far on the issue of perfor-mance persistence of mutual funds indifferent economies including India. Inthis backdrop, the present study hasmade an attempt to examine the issueof performance persistence for theIndian mutual fund schemes during2000-2012.
Data and MethodologyDataThe present study uses a sample of 80mutual fund schemes. The details ofthese schemes are given in Table-A- 1.1in Appendix-I. Out of eighty schemesthe sample comprises of sixty six growthschemes and fourteen equity linked sav-ings schemes (ELSS). Since balancedschemes of the sample are basically equityoriented they are also treated as equityschemes. The data used in the studymainly comprise of weekly Net AssetValues (NAV) for the eighty mutual fundsschemes during May 2000 to March2012. These NAV data are collectedfrom www.mutualfundsindia.com.
Persistence in Performance of Indian Mutual Fund Schemes :An Evaluation
95
This study has used Sensex as themarket proxy. Sensex data in weeklyfrequency are collected from BSEwebsite. In this study, weekly yield on91 days treasury bills of Governmentof India (GoI) is used as a proxy forrisk-free return. These data are collectedfrom RBI website.
Study Methodology
The present study evaluates the issueof ‘persistence’ for equity mutual fundsin India across two different time hori-zons with respect to three different per-formance measures. Different choicesof time horizons are needed to checkthe impact (if any) of the length of thetime horizon on the persistence of ascheme. In order to test the persistenceof mutual fund schemes this study hasadopted a non-parametric contingencytable approach. According to thismethod the measurement of fund per-formance requires two consecutive timeperiods : first one is the current periodand the second one is the test period.This study has used two different timeperiods of six months and one-year justto explore the issue of persistence overshort-term and long-term horizons. So,it has twenty-three pairs of half-yearlytime periods of current period - testperiod and eleven pairs of annual timeperiods of current period - test period.Within each period the schemes areclassified as winners or losers depending
on their performance in that period. Afund is said to be winner in the currentperiod if it is above or equal to themedian performance of all funds inthat period and it is loser if the reversehappens. Similarly, the other categoriescan be defined.
Once this classification is done, a two-way contingency table is created withelements such as WW (winner in suc-cessive periods), LL (loser in successiveperiods), WL (winner in the currentperiod and loser in the test period) andLW (loser in the current period andwinner in the test period) and is givenbelow :
Period(t)
Period (t+1)
Winner Loser
Winner WW WL
Loser LW LL
For each pair of current period and testperiod, number of funds belonging toeach category as mentioned above areobtained for each of the three measures -(i) Benchmark adjusted return (ii) Sharperatio and (iii) Jensen alpha. If there isevidence of positive persistence, then wewould observe more number of schemesin the WW or LL categories. If there isreversal there would be more cases inthe WL or LW categories. Evidence forpersistence is statistically tested usingrepeat winner approach (Malkiel, 1995),
The Journal of Institute of Public Enterprise, July-Dec, Vol. 42, No. 2© 2019, Institute of Public Enterprise
96
the odds ratio test (Brown & Goetzmann,1995) Kahn and Rudd’s Chi-square (χ2)test (1995) and the Spearman RankCorrelation Coefficient (SRCC) test.
In the present study returns refer to theaverage weekly return achieved by theconcerned mutual funds due to thechange in the net asset value from periodt-1 to period t. Income of any associateddividends is assumed to be reinvestedthus incorporated in the fund NAV.
The present study has used threedifferent performance proxies for testingpersistence which are given below :
(i) Benchmark adjusted return :
Re = Rp – Rb .....(1)
(ii) Sharpe ratio :
SR =
R Rp f
p
−σ
.....(2)
(iii) Jensen’s Alpha (ααααα) :
R R R Rp f p p m f p− = + ∗ −( ){ } +α β ε .....(3)
where,
Rp = the return of the scheme p for theconcerned period
Rb = benchmark return
Rf = the risk- free return for the sameperiod
σp = the total risk of the scheme p forthe same period
Rm = the market return for the sameperiod
βp = the systematic risk of the schemep
εp = the error term
The null hypotheses of these tests arethat there is no evidence of performancepersistence i.e., there is no relationbetween fund performance in currentperiod and in subsequent period or testperiod.
Malkiel’s Z – TestMalkiel’s Z test or repeat winner testshows the percentage of repeat winners(WW) to winner–losers (WL). Let, ‘p’be the probability that a winning fundcontinues to be a winning fund in the
next period, then p = 12
if there would
be no persistence. Since the randomvariable Y of the number of persistentlywinning funds is binomially distribu-ted, a binomial test to see if ‘p’ > ½ i.e.the test for repeat winner when n is rea-sonably large (n>20) is given as follows :
Z Y npnp p
= −−( )1
.....(4)
In equation (4) Z will be distributednormally with mean zero and standarddeviation one, A percentage of repeatwinner above 50 per cent and a Z-statistic above zero show performancepersistence.
Persistence in Performance of Indian Mutual Fund Schemes :An Evaluation
97
Brown and Goetzmann’s Odds Ratioor Cross Product Ratio (B&G CPR)Brown and Goetzmann (1995) proposedCross Product Ratio (CPR) or OddsRatio which is defined as the numberof repeat performers to the number ofthose that do not repeat and is given as(WW*LL) / (WL*LW). The statisticalsignificance of the CPR can be examinedby a Z-statistic which is given as :
ZCPRCPR
= ( )( )
loglogσ
.....(5)
In large samples with independentobservations, the standard error of thenatural log of the cross product ratio isapproximated as (Christensen, 1990)
σlog CPR WW WL LW LL( ) = + + +1 1 1 1.....(6)
For large samples, the Z statistic is nor-mally distributed with mean zero andstandard deviation one. A CPR aboveone and a positive Z statistic indicatepersistence in fund performance.
Kahn and Rudd’s Chi-square (χχχχχ2)Test
This study has also used Chi-square (χ2)test of Kahn and Rudd (1995) for per-formance persistence and is given as :
χ2 =−( )∑
O E
Eij ij
ij
i, j = 1, 2 ….n .....(7)
where, Oij = actual frequency of theith row and jth column in the contingencytable.
Eij = expected frequency of the ith row
and jth column in the contingency table.
However, the χ2 test suffers from oneserious limitation: though the devia-tions from expected frequencies areconsidered by the test, no definite con-clusions are drawn in terms of persis-tence or mean reversion properties ofthese deviations. Thus to test persis-tence this study has also examined theconditional probabilities apart from thesignificance of the chi-square values.
Spearman Rank Correlation Coeffi-cient (SRCC) TestSpearman Rank Correlation Coefficientdenoted by Rs is defined as follows :
R dn ns
i= − ∑−( )1 61
2
2 .....(8)
di = difference between rank of a schemein current period and test period
n = number of observations or num-ber of sample mutual fund schemes
For large samples, the sampling distri-bution of Rs is approximately normallydistributed with mean zero and standard
deviation 11n − . Then the corres-
ponding Z statistic is given as follows :
The Journal of Institute of Public Enterprise, July-Dec, Vol. 42, No. 2© 2019, Institute of Public Enterprise
98
Z RnS=−1 .....(11)
If the computed Z value is greater thanthe critical Z value at chosen level ofsignificance then null hypothesis of nopersistence is rejected.
Results and ConclusionThe objective of the study is to figureout whether performance is persistentfor the sample equity mutual fundschemes applying a 2x2 non-parametriccontingency table approach. Bench-mark adjusted return, Sharpe ratio andJensen Alpha are used as performanceproxies to rank all schemes based onthe past half-yearly return and annualreturn during May 2000 to March 2012.The significance of these results are alsotested by three different tests of repeatwinner approach (Malkiel, 1995), theodds ratio test (Brown & Goetzmann,1995) and Kahn and Rudd’s Chi-square(χ2) test (1995). Besides, contingencytable approach the Spearman rankcorrelation coefficient (SRCC) test isalso used in the study to examine theperformance persistence of samplemutual funds. The results are given inTables A-1.1 to A-1.8 in the Appendix.
Performance Persistence of Bench-mark Adjusted ReturnAccording to the results given inTable-A-1.1 for the benchmarkadjusted return there is some evidence
of persistence in terms of odds ratiotest, repeat winner approach and χ2 testfor a time horizon of six months. It isfound from Table A-1.1 that amongtwenty three number of half-year periodsthere are seven numbers of persistenceand three numbers of reversals in termsof odds ratio test and eight numbers ofpersistence and three numbers of rever-sals according to repeat winner app-roach at 5 per cent level of significance.This study has also examined the condi-tional probabilities apart from the sig-nificance of the χ2 values to determinewhether it is persistence or reversal. Ifit is persistence then there will be higherconditional probabilities for WW andLL than WL and LW. In case of rever-sals the results will be opposite. Basedon these considerations seven cases ofpersistence and four cases of reversalsare reported for χ2 test at 5 percent levelof significance in Table-A-1.1. Thus, forthe shorter time horizon (six months)there is some evidence of persistence ofperformance for the sample mutualfunds. Table-A-1.1 also documentssome cases of reversals in respect of thesetests. However,such short-run perfor-mance persistence vanishes whenSpearman rank correlation coefficienttest (SRCC Test) is used to examine it.The results of this test are given inTables-A-1.7 to A-1.8.
However, as the time horizon increasesto one year the number of persistence
Persistence in Performance of Indian Mutual Fund Schemes :An Evaluation
99
cases is significantly reduced for all thetests (except SRCC test) and disappearedfor repeat winner approach as revealedby Table-A-1.2. This actually supportsthe strong case of market efficiency ofthe mutual funds industry in the longrun.
Performance Persistence of SharpeRatio
Table-A-1.3 displays the contingencytable and different test results whensample schemes are ranked as winnersor losers based on Sharpe ratio. Theresults show that out of twenty threenumber of half-yearly periods there arefourteen numbers of persistence andseven numbers of reversals in terms ofodds ratio test, fifteen numbers of per-sistence and seven numbers of reversalsaccording to repeat winner approachand sixteen numbers of persistence andseven numbers of reversals according toχ2 test at 5 per cent level of significance.Thus, the number of persistenthalf-yearly periods is much higherfor Sharpe ratio than showed bybenchmark adjusted return in terms ofodds ratio test, Malkiel test (repeatwinner approach) and Kahn and Ruddχ2 test. But, Tables-A-1.7 to A-1.8reveal that likewise benchmark adjustedreturn such short-run performance per-sistence vanishes when Spearman rankcorrelation coefficient test (SRCC test)is used.
Nevertheless, for annual time horizonthough the numbers of persistence andreversal cases are significantly reducedfrom earlier half-yearly time horizon(except SRCC test), they did notdisappear and are equal for odds ratiotest and χ2 test applied in the study.These results are shown in Table-A-1.4.
Performance Persistence of JensenAlphaIn respect of Jensen Alpha, the type ofpersistence is almost similar as observedfor benchmark adjusted return for thesample mutual fund schemes accordingto odds ratio Test, Malkiel Test (repeatwinner approach) and Kahn and Ruddχ2 test. The results obtained fromTable-A-1.5 indicate that for odds ratiotest numbers of persistence are six outof twenty three half-yearly periods andthere is only one case of reversal. Thecorresponding figures for repeat winnerapproach and χ2 test are six numbersof persistence and two numbers ofreversals and six numbers of persistenceand one number of reversal only. Now,as before the number of persistence andreversals are reduced in the case of one yeartime horizon (Table-A-1.6). Finally, theSRCC test has documented no persis-tence for both the time horizons.
Thus, in conclusion, this can be arguedthat though there is some evidence ofshort-run performance persistence inthe Indian mutual funds market there
The Journal of Institute of Public Enterprise, July-Dec, Vol. 42, No. 2© 2019, Institute of Public Enterprise
100
is no long-run performance persistenceduring the period under consideration.This actually signifies that mutual fundsmarket in India is efficient in the long-run. This is because market efficiencyof any form implies historical perfor-mance cannot be used to select fundsthat will be superior performers in thefuture. Thus, on the whole this analy-sis suggests that past performance ofmutual funds cannot beused as indi-cators of future performance. This find-ing is consistent with the earlier Indianstudies of Guha Deb (2006), Sehgaland Jhanwar (2008) and Mondal andKhan (2014) and also with studies ofdeveloped capital markets like Jensen(1968), Kritzman (1983), Dunn andTheisen (1983), Elton et.al (1990),Bauer et. al. (2006), Casarin et al. (2008),Barras (2010), Fama and French(2010), Busse et al. (2010).
ReferencesAllen, D.E. & Tan, M.L. (1999) A Test of the
Persistence in the Performance of UKManaged funds, Journal of Business Finance& Accounting, 26, 559-593.
Babalos, V., Caporale, G.M., Kostakis, A., &Philippas, N. (2008) Testing for Persistencein Mutual Fund Performance and theEx-Post Verification Problem : Evidencefrom the Greek Market, European Journalof Finance, 14 (8), 735-753.
Bauer, R., Otten, R. & Rad, A.T. (2006) NewZealand Mutual Funds : Measuring Per-formance and Persistence, Accounting andFinance, 46, 347-363.
Barras, L., Scaillet, O. & Wermers, R. (2010)False Discoveries in Mutual Fund Perfor-mance : Measuring Luck in EstimatedAlphas, Journal of Finance, 65, 179-216.
Berk, J.B. & Green, R.C. (2004) Mutual FundFlows and Performance in RationalMarkets, Journal of Political Economy, 112,1269-1295.
Brown, S. & Goetzmann, W. (1995) Perfor-mance Persistence, Journal of Finance, 50,679-698.
Carhart, M.M. (1997) On Persistence in MutualFund Performance, Journal of Finance,52(1), 57-82.
Casarin, R, Pelizzon, L. & Piva, A. (2008)Italian Equity Funds : Efficiency andPerformance Persistence, Working Paper12/WP/2008, Department of EconomicsCa’Foscari University, Venice.
Dunn. P. & Theisen, R. (1983) How Consis-tently do Active Managers Win?, Journal ofPortfolio Management, 9, 47-53.
Droms, W. & Walker, D. (2001) Persistence ofMutual Fund Operating Characteristics :Returns, Turnover Rates and ExpenseRatios, Applied Financial Economics, 11(44), 457-466.
Elton, E.J., Gruber, M.J. & Rentzler, J. (1990)ThePerformance of Publicly OfferedCommodity Funds, Financial AnalystsJournal, 46, 23-30.
Elton, E.J., Gruber, M.J., Das, S. & Blake. C.(1996) The Persistence of Risk-AdjustedMutual Fund Performance, Journal ofBusiness, 69, 133-157.
Fama, E. (1970) Efficient Capital Markets : AReview of Theory and Empirical Work,Journal of Finance, 25, 383-417.
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Fama, E. & French, K.R. (2010) Luck VersusSkill in the Cross Section of Mutual FundReturns, Journal of Finance, 65, 1915-1947.
Filip, D. (2011) Performance Persistence ofEquity Funds in Hungary, ContemporaryEconomics, 5(1), 18-34.
Goetzmann, W.N. & Ibbotson, R.G. (1994)Do Winners Repeat? Journal of PortfolioManagement, 20(2), 9-18.
Grinblatt, M, & Titman, S. (1992) The Persis-tence of Mutual Fund Performance,Journal of Finance, 47(5), 1977-1984.
Grossman, S.J. & Stiglitz, J.E. (1980) On theImpossibility of Informationally EfficientMarkets, American Economic Review, 70(3),393- 408.
Gruber, M.J. (1996) Another Puzzle : TheGrowth in Actively Managed MutualFunds, Journal of Finance, 51(3), 783-810.
Guha Deb, S. (2006) Do Winner Funds Repeat?An Empirical Exploration with IndianEquity Mutual Funds, Paper Presented inICFAI Conference, Hyderabad.
Hendricks, D., Patel, J. & Zeckhauser, R. (1993)Hot hands in Mutual Funds : Short-RunPersistence of Relative Performance, 1974-1988, Journal of Finance, 48(1) : 93-130.
Jensen, M.C. (1968) The Performance ofMutual Funds in The Period 1945-1964,Journal of Finance, 23, 389-416.
Kritzman, M. (1983) Can Bond ManagersPerform Consistently? Journal of PortfolioManagement, 9, 54-56.
Malkiel, B.G. (1995) Returns from Investingin Equity Mutual Funds 1971 to 1991,Journal of Finance, 50(2), 549-572.
Mondal, T., & Khan, T.L. (2014) A Study onthe Performance Persistence of IndianEquity Mutual Funds, Indian Journal ofAccounting, 46(1), 42-50.
Otten, R. & Bams, D. (2002) European MutualFund Performance, European FinancialManagement, 8, 75-101.
Roy, B. & Deb, S.S. (2003) The ConditionalPerformance of Indian Mutual Funds : AnEmpirical Study, Working Paper, SocialScience Research Network.
Sehgal, S. & Jhanwar, M. (2008) On StockSelection Skills and Market Timing Abili-ties of Mutual Fund Managers in India,International Research Journal of Finance &Economics, 15, 299-309.
Volkman, D.A. &Wohar, M.E. (1995)Determinants of Persistence in RelativePerformance of Mutual Funds, Journal ofFinancial Research, 18, 415-30.
Wermers, R. (1997) Momentum InvestmentStrategies of Mutual Funds, PerformancePersistence and Survivorship Bias, Work-ing Paper, Graduate School of Business andAdministration, University of Colorado atBoulder, Colorado, USA.
— x — x —
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102
Ap
pen
dix
: R
esu
lts
of
Perf
orm
an
ce P
ers
iste
nce
Ba
sed
on
Thre
e P
erf
orm
an
ce M
ea
sure
sTa
ble-
A-1
.1 :
Con
tinge
ncy
Tabl
e fo
r Pe
rfor
man
ce P
ersis
tenc
e of
Ben
chm
ark
Adj
uste
d R
etur
n (6
Mon
ths
Lag)
Tim
ePe
rcen
tage
Mal
kiel
B &
GS.
No.
Peri
odW
WW
LLW
LLR
epea
tZ
Sco
reC
PR
Z S
core
χχχχ χ2
Win
ner
1H
1-H
225
1416
2564
.10
1.76
1409
7*2.
7901
792.
2184
91*
5.1*
(62.
5%)
(35%
)(4
0%)
(62.
5%)
2H
2-H
322
1916
2353
.66
0.46
8521
31.
6644
741.
1278
941.
5(5
5%)
(47.
5%)
(40%
)(5
7.5%
)
3H
3-H
419
2121
1947
.5-0
.316
228
0.81
8594
-0.4
4703
0.2
(47.
5%)
(52.
5%)
(52.
5%)
(47.
5%)
4H
4-H
518
2222
1845
-0.6
3245
60.
6694
21-0
.892
930.
8(4
5%)
(55%
)(5
5%)
(45%
)
5H
5-H
616
2524
1539
.02
-1.4
0556
40.
4-1
.995
55*
4.1*
(40%
)(6
2.5%
)(6
0%)
(37.
5%)
6H
6-H
727
1313
2767
.52.
2135
944*
4.31
3609
3.06
1887
*9.
8*(6
7.5%
)(3
2.5%
)(2
7%)
(67.
5%)
7H
7-H
819
2121
1947
.5-0
.316
228
0.81
8594
-0.4
4703
0.2
(47.
5%)
(52.
5%)
(52.
5%)
(21%
)
8H
8-H
913
2727
1332
.5-2
.213
594*
0.23
1824
-3.0
6189
*9.
8*(3
2.5%
)(6
7.5%
)(6
7.5%
)(3
2.5%
)
9H
9-H
1025
1126
1869
.44
2.33
3333
3*1.
5734
270.
9557
047.
3(6
2.5%
)(2
7.5%
)(6
5%)
(45%
)
10H
10-H
1126
1414
2665
1.89
7366
6*3.
4489
82.
6409
12*
7.2*
(65%
)(3
5%)
(35%
)(6
5%)
(Con
td...
)
Persistence in Performance of Indian Mutual Fund Schemes :An Evaluation
103
11H
11-H
1225
1515
2562
.51.
5811
388*
2.77
7778
2.21
194*
5(6
2.5%
)(3
7.5%
)(6
2.5%
)(6
2.5%
)
12H
12-H
1322
1619
2357
.89
0.97
3328
51.
6644
741.
1278
941.
5(5
5%)
(40%
)(4
7.5%
)(5
7.5%
)
13H
13-H
1424
1616
2460
1.26
4911
12.
251.
7766
593.
2(6
0%)
(40%
)(4
0%)
(60%
)
14H
14-H
1524
1617
2360
1.26
4911
12.
0294
121.
5575
812.
5(6
0%)
(40%
)(4
2.5%
)(5
7.5%
)
15H
15-H
1611
2929
1127
.5-2
.846
05*
0.14
3876
-3.8
7154
*16
.2*
(27.
5%)
(72.
5%)
(72.
5%)
(27.
5%)
16H
16-H
1727
1313
2767
.52.
2135
944*
4.31
3609
3.06
1887
*9.
8*(6
7.5%
)(3
2.5%
)(3
2.5%
)(6
7.5%
)
17H
17-H
1818
2222
1845
-0.6
3245
60.
6694
21-0
.892
930.
8(4
5%)
(55%
)(5
5%)
(45%
)
18H
18-H
1922
1226
2064
.71
1.71
4985
9*1.
4102
560.
7375
495.
2*(5
5%)
(30%
)(6
5%)
(50%
)
19H
19-H
2028
1212
2870
2.52
9822
1*5.
4444
443.
4728
88*
12.8
*(7
0%)
(30%
)(3
0%)
(70%
)
20 H
20 -H
2119
2121
1947
.5-0
.316
228
0.81
8594
-0.4
4703
0.2
(47.
5%)
(52.
5%)
(52.
5%)
(47.
5%)
21 H
21-H
2214
2325
1837
.84
-1.4
7959
10.
4382
61-1
.798
193.
7(3
5%)
(57.
5%)
(62.
5%)
(45%
)
22 H
22-H
2328
816
2877
.78
3.33
3333
3*6.
125
3.56
1713
*14
.4*
(70%
)(2
0%)
(40%
)(7
0%)
23 H
23-H
2413
2727
1332
.5-2
.213
594*
0.23
1824
-3.0
6189
*9.
8*(3
2.5%
)(6
7.5%
)(6
7.5%
)(3
2.5%
)
Sour
ce :
Cal
cula
ted.
Figu
res
in t
he p
aren
thes
es a
re c
ondi
tion
al p
roba
bilit
ies.
; *
Den
otes
5%
leve
l of s
igni
fican
ce.
The Journal of Institute of Public Enterprise, July-Dec, Vol. 42, No. 2© 2019, Institute of Public Enterprise
104
Tab
le A
-1.2
: C
onti
ngen
cy T
able
for
Per
form
ance
Per
sist
ence
of
Ben
chm
ark
Adj
uste
d R
etur
n (1
year
Lag
)
Tim
ePe
rcen
tage
Mal
kiel
B &
GS.
No.
Peri
odW
WW
LLW
LLR
epea
tZ
Sco
reC
PR
Z S
core
χχχχ χ2
Win
ner
1Y1
-Y2
2020
2020
500
10
0(5
0%)
(50%
)(5
0%)
(50%
)
2Y2
-Y3
2119
1921
52.5
0.31
6227
81.
2216
070.
4470
270.
2(5
2.5%
)(4
7.5%
)(4
7.5%
)(5
2.5%
)
3Y3
-Y4
2317
1723
57.5
0.94
8683
30.
5463
14-1
.336
551.
8(5
7.5%
)(4
2.5%
)(4
2.5%
)(5
7.5%
)
4Y4
-Y5
2317
1723
57.5
0.94
8683
30.
5463
14-1
.336
551.
8(5
7.5%
)(4
2.5%
)(4
2.5%
)(5
7.5%
)
5Y5
-Y6
2317
1723
57.5
0.94
8683
30.
5463
14-1
.336
551.
8(5
7.5%
)(4
2.5%
)(4
2.5%
)(5
7.5%
)
6Y6
-Y7
2515
1426
62.5
1.58
1138
83.
0952
382.
4279
55*
6.1*
(64%
)(3
8%)
(34%
)(6
3%)
7Y7
-Y8
1821
2120
46.1
5-0
.480
384
0.81
6327
-0.4
5289
0.3
(46%
)(5
4%)
(51%
)(4
9%)
8Y8
-Y9
1722
2417
43.5
9-0
.800
641
0.54
7348
-1.3
3183
1.9
(41%
)(5
4%)
(62%
)(4
4%)
9Y
9-Y
1017
2416
2341
.46
-1.0
9321
60.
4927
54-1
.557
582.
5(4
3%)
(60%
)(5
8%)
(40%
)
10Y
10-Y
1125
1516
2462
.51.
5811
382.
51.
9955
55*
4.1*
(61%
)(3
7%)
(41%
)(6
2%)
11Y
11-Y
1223
1817
2256
.09
0.78
0868
1.65
3595
1.11
5436
1.3
(58%
)(4
5%)
(43%
)(5
5%)
Sour
ce :
Cal
cula
ted.
Figu
res i
n th
e pa
rent
hese
s are
con
ditio
nal p
roba
bilit
ies;
* D
enot
es 5
% le
vel o
f sig
nific
ance
.
Persistence in Performance of Indian Mutual Fund Schemes :An Evaluation
105
Tab
le-A
-1.3
: C
onti
ngen
cy T
able
for
Per
form
ance
Per
sist
ence
of
Shar
pe R
atio
(6
Mon
ths
Lag)
Tim
ePe
rcen
tage
Mal
kiel
B &
GS.
No.
Peri
odW
WW
LLW
LLR
epea
tZ
Sco
reC
PR
Z S
core
χχχχ χ2
Win
ner
1H
1-H
227
1313
2767
.52.
2135
94*
4.31
3609
3.06
1887
*9.
8*(6
7.5%
)(3
2.5%
)(3
2.5%
)(6
7.5%
)
2H
2-H
330
1023
1775
3.16
2278
*2.
2173
911.
6404
9110
.9*
(75%
)(2
5%)
(57.
5%)
(42.
5%)
3H
3-H
420
3320
737
.73
-1.7
8569
*0.
2121
21-2
.966
81*
16.9
*(5
0%)
(82.
5%)
(50%
)(1
7.5%
)
4H
4-H
523
173
3757
.50.
9486
8316
.686
274.
1379
25*
29.8
*(5
7.5%
)(4
2.5%
)(7
.5%
)(9
2.5%
)
5H
5-H
621
915
3570
2.19
089*
5.44
4444
3.36
2609
*18
.6*
(52.
5%)
(22.
5%)
(37.
5%)
(87.
5%)
6H
6-H
733
108
2976
.74
3.50
7467
*11
.962
54.
6102
47*
24.7
*(8
2.5%
)(2
5%)
(20%
)(7
2.5%
)
7H
7-H
82
3838
25
-5.6
921*
0.00
277
-5.7
3977
*64
.8*
(5%
)(9
5%)
(95%
)(5
%)
8H
8-H
93
3739
17.
5-5
.375
87*
0.00
2079
-5.2
4585
*65
*(7
.5%
)(9
2.5%
)(9
7.5%
)(2
.5%
)
9H
9-H
1038
32
3792
.68
5.46
6082
*23
4.33
335.
7949
69*
61.3
*(9
5%)
(7.5
%)
(5%
)(9
2.5%
)
10 H
10-H
1138
22
3895
5.69
21*
361
5.73
9768
*64
.8*
(95%
)(5
%)
(5%
)(9
5%)
11 H
11-H
1236
44
3690
2.21
3594
*81
5.89
5772
*51
.2*
(90%
)(1
0%)
(10%
)(9
0%)
(Con
td...
)
The Journal of Institute of Public Enterprise, July-Dec, Vol. 42, No. 2© 2019, Institute of Public Enterprise
106
12 H
12-H
1337
43
3690
.24
3.16
2278
*11
15.
8954
94*
54.5
*(9
2.5%
)(1
0%)
(7.5
%)
(90%
)
13 H
13-H
1439
22
3795
.12
-1.7
8569
360.
755.
7389
94*
64.9
*(9
7.5%
)(5
%)
(5%
)(9
2.5%
)
14 H
14-H
1539
11
3997
.50.
9486
8315
215.
1158
85*
72.2
*(9
7.5%
)(2
.5%
)(2
.5%
)(9
7.5%
)
15 H
15-H
162
3938
14.
878
2.19
089*
0.00
135
-5.3
0433
*68
.5*
(5%
)(9
7.5%
)(9
5%)
(2.5
%)
16H
16-H
1739
11
3997
.53.
5074
67*
1521
5.11
5885
*72
.2*
(97.
5%)
(2.5
%)
(2.5
%)
(97.
5%)
17 H
17-H
181
3939
12.
5-5
.692
1*0.
0006
57-5
.115
89*
72.2
*(2
.5%
)(9
7.5%
)(9
7.5%
)(2
.5%
)
18 H
18-H
1940
00
4010
0-5
.375
87*
unde
fined
unde
fined
80*
(100
%)
(0%
)(0
%)
(100
%)
19 H
19-H
2037
33
3792
.55.
4660
82*
152.
1111
5.91
86*
57.8
*(9
2.5%
)(7
.5%
)(7
.5%
)(9
2.5%
)
20 H
20 -H
2137
33
3792
.55.
6921
*15
2.11
115.
9186
*57
.8*
(92.
5%)
(7.5
%)
(7.5
%)
(92.
5%)
21H
21-H
2239
11
392.
5-6
.008
33*
0.00
0657
-5.1
1589
*72
.2*
(97.
5%)
(2.5
%)
(2.5
%)
(97.
5%)
22H
22-H
2337
33
3792
.55.
3758
72*
152.
1111
5.91
86*
57.8
*(9
2.5%
)(7
.5%
)(7
.5%
)(9
2.5%
)
23H
23-H
2437
32
387.
5-5
.375
87*
0.00
4267
-5.7
9497
*61
.3*
(92.
5%)
(7.5
%)
(5%
)(9
5%)
Sour
ce :
Cal
cula
ted.
Figu
res i
n th
e pa
rent
hese
s are
con
ditio
nal p
roba
bilit
ies;
* D
enot
es 5
% le
vel o
f sig
nific
ance
.
Persistence in Performance of Indian Mutual Fund Schemes :An Evaluation
107
Tab
le-A
-1.4
: C
onti
ngen
cy T
able
for
Per
form
ance
Per
sist
ence
of
Shar
pe R
atio
(1y
ear
Lag)
Tim
ePe
rcen
tage
Mal
kiel
B &
GS.
No.
Peri
odW
WW
LLW
LLR
epea
tZ
Sco
reC
PR
Z S
core
χχχχ χ2
Win
ner
1Y1
-Y2
337
373
7.5
-5.3
7587
*0.
0065
74-5
.918
6*57
.8*
(7.5
%)
(92.
5%)
(92.
5%)
(7.5
%)
2Y2
-Y3
1525
2515
37.5
-1.5
8114
0.36
-2.2
1194
*5*
(37.
5%)
(62.
5%)
(62.
5%)
(37.
5%)
3Y3
-Y4
1723
2317
42.5
-0.9
4868
0.54
6314
-1.3
3655
1.8
(42.
5%)
(57.
5%)
(57.
5%)
(42.
5%)
4Y4
-Y5
382
238
955.
6921
*36
15.
7397
68*
64.8
*(5
%)
(95%
)(9
5%)
(5%
)
5Y5
-Y6
392
138
95.1
25.
7784
29*
741
5.30
4327
*68
.5*
(97.
5%)
(5%
)(2
.5%
)(9
5%)
6Y6
-Y7
355
535
87.5
4.74
3416
*49
5.75
608*
45*
(87.
5%)
(12.
5%)
(12.
5%)
(87.
5%)
7Y7
-Y8
337
733
82.5
4.11
0961
*22
.224
495.
2697
5*33
.8*
(82.
5%)
(17.
5%)
(17.
5%)
(82.
5%)
8Y8
-Y9
735
335
16.6
6-4
.320
49*
0.03
0303
-5.5
1654
*39
.4*
(17.
5%)
(87.
5%)
(82.
5%)
(12.
5%)
9Y
9-Y
104
3636
410
-5.0
5964
0.01
2346
-5.8
9577
*51
.2*
(10%
)(9
0%)
(90%
)(1
0%)
10Y
10-Y
1136
74
3383
.72
4.42
2459
42.4
2857
5.58
111*
42.5
*(9
0%)
(17.
5%)
(10%
)(8
2.5%
)
11Y
11-Y
1214
2725
1434
.14
-2.0
3026
0.29
037
-1.9
5899
*7.
3*(3
5%)
(67.
5%)
(62.
5%)
(35%
)
Sour
ce :
Cal
cula
ted.
Figu
res i
n th
e pa
rent
hese
s are
con
ditio
nal p
roba
bilit
ies;
* D
enot
es 5
% le
vel o
f sig
nific
ance
.
The Journal of Institute of Public Enterprise, July-Dec, Vol. 42, No. 2© 2019, Institute of Public Enterprise
108
Tab
le-A
-1.5
: C
onti
ngen
cy T
able
for
Per
form
ance
Per
sist
ence
of
Jens
en A
lpha
(6
Mon
ths
Lag)
Tim
ePe
rcen
tage
Mal
kiel
B &
GS.
No.
Peri
odW
WW
LLW
LLR
epea
tZ
Sco
reC
PR
Z S
core
χχχχ χ2
Win
ner
1H
1-H
218
2123
1846
.15
-0.4
8038
0.67
0807
-0.8
8791
0.9
(45%
)(5
2.5%
)(5
7.5%
)(4
5%)
2H
2-H
319
2222
1746
.34
-0.4
6852
0.66
7355
-0.8
9904
0.9
(47.
5%)
(55%
)(5
5%)
(42.
5%)
3H
3-H
420
2120
1948
.78
-0.1
5617
0.90
4762
-0.2
2365
0.1
(50%
)(5
2.5%
)(5
0%)
(47.
5%)
4H
4-H
517
2323
1742
.5-0
.948
680.
5463
14-1
.336
551.
8(4
2.5%
)(5
7.5%
)(5
7.5%
)(4
2.5%
)
5H
5-H
618
2222
1845
-0.6
3246
0.66
9421
-0.8
9293
0.8
(45%
)(5
5%)
(55%
)(4
5%)
6H
6-H
724
1616
2460
1.26
4911
2.25
1.77
6659
3.2
(60%
)(4
0%)
(40%
)(6
0%)
7H
7-H
814
2726
1334
.15
-2.0
3026
*0.
2592
59-2
.853
19*
8.5*
(35%
)(6
7.5%
)(6
5%)
(32.
5%)
8H
8-H
914
2620
2035
-1.8
9737
*0.
5384
62-1
.351
213.
6(3
5%)
(65%
)(5
0%)
(50%
)
9H
9-H
1027
1313
2767
.52.
2135
94*
4.31
3609
3.06
1887
*9.
8*(6
7.5%
)(3
2.5%
)(3
2.5%
)(6
7.5%
)
10H
10-H
1126
1414
2665
2.21
3594
*3.
4489
82.
6409
12*
7.2*
(65%
)(3
5%)
(35%
)(6
5%)
(Con
td...
)
Persistence in Performance of Indian Mutual Fund Schemes :An Evaluation
109
11H
11-H
1220
2020
2050
01
00
(50%
)(5
0%)
(50%
)(5
0%)
12 H
12-H
1321
1919
2152
.50.
3162
281.
2216
070.
4470
270.
2(5
2.5%
)(4
7.5%
)(4
7.5%
)(5
2.5%
)
13 H
13-H
1423
1817
2256
.09
0.78
0869
1.65
3595
1.11
5436
1.3
(57.
5%)
(45%
)(4
2.5%
)(5
5%)
14 H
14-H
1521
1919
2152
.50.
3162
281.
2216
070.
4470
270.
2(5
2.5%
)(4
7.5%
)(4
7.5%
)(5
2.5%
)
15 H
15-H
1616
2424
1640
-1.2
6491
0.44
4444
-1.7
7666
3.2
(40%
)(6
0%)
(60%
)(4
0%)
16H
16-H
1722
1917
2253
.66
0.46
8521
1.49
8452
0.89
9041
0.9
(55%
)(4
7.5%
)(4
2.5%
)(5
5%)
17 H
17-H
1817
2323
1742
.5-0
.948
680.
5463
14-1
.343
921.
8(4
2.5%
)(5
5%)
(55%
)(4
2.5%
)
18 H
18-H
1925
1515
2562
.51.
5811
392.
7777
782.
2119
4*5
(62.
5%)
(37.
5%)
(37.
5%)
(62.
5%)
19H
19-H
2031
810
3179
.48
3.68
2948
*12
.012
54.
6201
45*
24.3
*(7
7.5%
)(2
0%)
(25%
)(7
7.5%
)
20H
20-H
2127
1313
2767
.52.
2135
94*
4.31
3609
3.06
1887
*9.
8*(6
7.5%
)(3
2.5%
)(3
2.5%
)(6
7.5%
)
21H
21-H
2228
1211
2970
2.52
9822
*6.
1515
153.
6744
91*
14.5
*
22 H
22-H
2325
1416
2564
.10
1.76
141*
2.79
0179
2.21
8491
*5.
1*
23 H
23-H
2418
2322
1743
.90
-0.7
8087
0.60
4743
-1.1
1544
1.3
Sour
ce :
Cal
cula
ted.
Figu
res i
n th
e pa
rent
hese
s are
con
ditio
nal p
roba
bilit
ies;
* D
enot
es 5
% le
vel o
f sig
nific
ance
.
The Journal of Institute of Public Enterprise, July-Dec, Vol. 42, No. 2© 2019, Institute of Public Enterprise
110
Tab
le-A
-1.6
: C
onti
ngen
cy T
able
for
Per
form
ance
Per
sist
ence
of J
ense
n A
lpha
(1
year
lag)
Tim
ePe
rcen
tage
Mal
kiel
B &
GS.
No.
Peri
odW
WW
LLW
LLR
epea
tZ
Sco
reC
PR
Z S
core
χχχχ χ2
Win
ner
1Y1
-Y2
1922
2019
46.3
4-0
.468
520.
8204
55-0
.441
720.
3(4
8%)
(55%
)(5
0%)
(48%
)
2Y2
-Y3
2317
1723
57.5
0.94
8683
1.83
045
1.33
6546
1.8
(58%
)(4
3%)
(43%
)(5
8%)
3Y3
-Y4
1823
2019
43.9
0-0
.780
870.
7434
78-0
.660
060.
7(4
5%)
(58%
)(5
0%)
(48%
)
4Y4
-Y5
2316
1724
58.9
71.
1208
972.
0294
121.
5575
812.
5(5
9%)
(41%
)(4
1%)
(59%
)
5Y5
-Y6
2218
1822
550.
6324
561.
4938
270.
8929
280.
8(5
6%)
(46%
)(4
4%)
(54%
)
6Y6
-Y7
1921
2020
47.5
-0.3
1623
0.90
4762
-0.2
2365
0.1
(49%
)(5
4%)
(49%
)(4
9%)
7Y7
-Y8
1921
2020
48.7
1-0
.160
130.
9047
62-0
.223
650.
1(4
9%)
(51%
)(5
1%)
(49%
)
8Y8
-Y9
2020
2020
500
0.90
4762
-0.2
2365
0(5
0%)
(50%
)(5
0%)
(50%
)
9Y
9-Y
1020
2220
1847
.62
-0.3
0861
10
0.4
(50%
)(5
5%)
(50%
)(4
5%)
10Y
10-Y
1127
1514
2464
.29
1.85
164
3.08
5714
*2.
4199
8*6.
3*(6
6%)
(37%
)(3
6%)
(62%
)
11Y
11-Y
1226
1414
2665
1.89
7367
3.44
898*
2.64
0912
*7.
2*(6
3%)
(34%
)(3
6%)
(67%
)
Sour
ce :
Cal
cula
ted.
Figu
res i
n th
e pa
rent
hese
s are
con
ditio
nal p
roba
bilit
ies;
* D
enot
es 5
% le
vel o
f sig
nific
ance
.
Persistence in Performance of Indian Mutual Fund Schemes :An Evaluation
111
Tab
le-A
- 1.
7 : R
esul
ts o
f Sp
earm
an R
ank
Cor
rela
tion
Coe
ffic
ient
Tes
t (6
Mon
ths
Lag)
S.N
o.T
ime P
erio
dB
AR
Shar
pe R
atio
Jens
en A
lpha
1H
1-H
2Z
=0.0
2742
3028
5837
525
Z=0
.039
3147
8044
7970
6Z
=0.0
0198
5914
6493
1386
2H
2-H
3Z
=-0.
0184
4025
9266
9357
Z=-
0.00
6108
0721
4848
728
Z=-
0.00
7698
3862
7004
937
3H
3-H
4Z
=0.0
0341
7988
5597
7527
Z=-
0.02
0167
7149
0478
5Z
=-0.
0083
0761
1082
7871
1
4H
4-H
5Z
=-0.
0253
5008
1818
3332
Z=0
.018
8912
4386
8572
7Z
=-0.
0210
0111
3349
9154
5H
5-H
6Z
=-0.
0205
8441
4127
3502
Z=0
.017
8442
2113
8456
4Z
=-0.
0180
2356
0044
3705
6H
6-H
7Z
=0.0
3284
8030
4876
55Z
=0.0
6999
4920
0435
459
Z=0
.031
0572
7876
5365
3
7H
7-H
8Z
=-0.
0111
4011
0861
4897
Z=-
0.07
7039
2467
7437
9Z
=-0.
0429
3320
6608
4734
8H
8-H
9Z
-0.0
4652
2622
0636
077
Z=-
0.08
8896
7132
5952
53Z
=-0
.062
7527
9304
8836
9
9H
9-H
10Z
=0.0
5781
3061
1256
432
Z=0
.089
3846
2057
7085
8Z
=0.0
6195
8954
6564
817
10H
10-H
11Z
=0.0
3978
4226
4075
693
Z=0
.089
4874
7671
4301
3Z
=0.0
5008
0389
4765
22
11H
11-H
12Z
=0.0
2382
3063
7812
114
Z=0
.079
2308
7369
8123
8Z
=0.0
1810
5317
4867
725
12 H
12-H
13Z
=0.0
0542
7639
2407
5423
Z=0
.066
6006
6751
5435
7Z
=0.0
1067
5939
5755
943
13 H
13-H
14Z
=0.0
1619
0610
9324
54Z
=0.0
8191
3045
2762
808
Z=0
.027
1065
4816
1551
14 H
14-H
15Z
=0.0
2841
7304
5768
352
Z=0
.083
2686
3641
8043
5Z
=0.0
1986
7058
5036
937
(Con
td...
)
The Journal of Institute of Public Enterprise, July-Dec, Vol. 42, No. 2© 2019, Institute of Public Enterprise
112
15 H
15-H
16Z
=-0.
0638
9475
9905
6136
Z=-
0.09
0814
0571
5069
55Z
=-0.
0428
2243
8460
7029
16H
16-H
17Z
=0.0
4049
1032
6838
191
Z=0
.083
6906
1031
4312
Z=0
.022
4621
9796
5745
3
17 H
17-H
18Z
=-0.
0017
5910
3680
0695
2Z
=-0.
0900
5714
1474
2638
Z=-
0.01
7361
5884
9459
92
18 H
18-H
19Z
=-0.
0114
6186
5957
3945
Z=0
.084
9802
6803
4782
8Z
=0.0
3963
6535
5438
753
19H
19-H
20Z
=0.0
5683
1971
8168
188
Z=0
.085
5921
3018
4372
2Z
=0.0
7762
7372
8923
033
20H
20-H
21Z
=0.0
0869
2662
2631
3214
Z=0
.075
9658
5067
5745
9Z
=0.0
3915
6540
2368
699
21H
21-H
22Z
=-0.
0204
4463
5274
2113
Z=-
0.07
3668
7302
7793
4Z
=0.0
3689
1067
8812
781
22 H
22-H
23Z
=0.0
6673
2534
3580
197
Z=0
.085
5710
3148
9558
8Z
=0.0
3899
5662
6889
175
23 H
23-H
24Z
=-0.
0671
7033
2275
3983
Z=-
0.08
3904
2345
9929
8Z
=-0.
0188
8069
4521
166
Sour
ce :
Cal
cula
ted.
BA
R :
Ben
chm
ark
Adj
uste
d R
etur
n.
Persistence in Performance of Indian Mutual Fund Schemes :An Evaluation
113
Tab
le-A
-1.8
: R
esul
ts o
f Sp
earm
an R
ank
Cor
rela
tion
Coe
ffic
ient
Tes
t (1
yea
r La
g)
S.N
o.T
ime P
erio
dB
AR
Shar
pe R
atio
Jens
en A
lpha
1Y1
-Y2
Z=-
0.00
3003
9266
7406
175
Z=-
0.05
5347
1511
6932
38Z
=-0.
0174
3807
1263
2979
2Y2
-Y3
Z=-
0.00
1400
4258
6824
125
Z=-
0.02
2103
5201
5391
7Z
=0.0
1426
7992
3675
804
3Y3
-Y4
Z=0
.014
7084
2762
1810
7Z
=-0.
0080
9398
6797
8011
5Z
=-0.
0022
2854
9639
6682
9
4Y4
-Y5
Z=0
.024
8806
3585
8734
4Z
=0.0
7854
2528
7798
357
Z=0
.039
3965
3789
0372
6
5Y5
-Y6
Z=0
.031
6480
4222
0141
3Z
=0.0
7436
7624
5436
287
Z=0
.040
9472
9195
9159
5
6Y6
-Y7
Z=0
.030
0761
8945
6541
Z=0
.071
4533
6732
2524
1Z
=0.0
2238
5715
1970
466
7Y7
-Y8
Z=0
.000
1345
0417
9435
599
Z=0
.050
1885
2028
7440
8Z
=0.0
1088
1651
8500
253
8Y8
-Y9
Z=-
0.01
4631
9448
5311
2Z
=-0.
0456
5757
5576
2572
Z=-
0.00
2603
0514
7260
663
9Y
9-Y
10Z
=-0.
0378
8798
1211
2125
Z=-
0.06
8813
3931
3399
39Z
=-0.
0202
0727
4957
5602
10Y
10-Y
11Z
=0.0
1961
6511
5027
843
Z=0
.067
6767
0095
0920
5Z
=0.0
4448
6598
0141
12
11Y
11-Y
12z=
0.02
2894
7212
0942
06Z
=-0.
0085
2123
5367
7730
6z=
0.02
4959
7559
6428
48
Sour
ce :
Cal
cula
ted.
BA
R :
Ben
chm
ark
Adj
uste
d R
etur
n
The Journal of Institute of Public Enterprise, July-Dec, Vol. 42, No. 2© 2019, Institute of Public Enterprise
114
Table-A-1.8 : Sample Mutual Fund Schemes
S. No. Name of the Scheme Aim
1. Baroda Pioneer ELSS 96 TP
2. Birla Sun Life 95 G
3. Birla Sun Life Advantage Fund G
4. Birla Sun Life buy India Fund G
5. Birla Sun Life Equity Fund G
6. Birla Sun Life India Opportunities Fund G
7. Birla Sun Life MNC Fund G
8. Birla Sun Life New Millennium G
9. CanaraRobeco Balance B
10. DSP BlackRock Balanced Fund B
11. DSP BlackRock Opportunities Fund G
12. DSP BlackRock Technology.com Fund G
13. Escorts Tax Plan TP
14. Franklin India Bluechip G
15. Franklin India Opportunity Fund G
16. Franklin India Prima Fund G
17. Franklin India Prima Plus G
18. Franklin India Taxshield TP
19. Franklin Infotech Fund G
20. FT India Balanced Fund B
21. HDFC Balanced Fund B
22. HDFC Capital Builder Fund G
23. HDFC Equity Fund G
24. HDFC Growth Fund G
25. HDFC Prudence Fund B
26. HDFC Taxsaver TP
(Contd...)
Persistence in Performance of Indian Mutual Fund Schemes :An Evaluation
115
S. No. Name of the Scheme Aim
27. HDFC Top 200 G
28. ICICI Prudential Balanced B
29. ICICI Prudential FMCG G
30. ICICI Prudential Tax Plan TP
31. ICICI Prudential Top 100 Fund G
32. ICICI Prudential Top 200 Fund G
33. ICICI Prudential Technology Fund G
34. ING Balanced Fund B
35. ING Core Equity Fund G
36. JM Balanced B
37. JM Basic Fund G
38. JM Equity G
39. Kotak 50 G
40. Kotak Balance B
41. L&T Opportunities Fund G
42. LIC Nomura Equity Fund G
43. LIC Nomura MF Growth Fund G
44. LIC Nomura Tax Plan TP
45. PRINCIPAL Balanced Fund B
46. PRINCIPAL Index Fund G
47. PRINCIPAL Growth Fund G
48. Reliance Growth G
49. Reliance Vision G
50. Sahara Taxgain TP
51. SBI Magnum Balanced Fund B
52. SBI Magnum Equity Fund G
53. SBI Magnum Global Fund 94 G
54. SBI Magnum Multiplier Plus 93 G
(Contd...)
The Journal of Institute of Public Enterprise, July-Dec, Vol. 42, No. 2© 2019, Institute of Public Enterprise
116
S. No. Name of the Scheme Aim
55. SBI Magnum Sector Funds Umbrella – Contra G
56. SBI Magnum Sector Funds Umbrella – Pharma G
57. SBI Magnum Tax Gain Scheme 93 TP
58. Sundaram Balanced Fund B
59. Sundaram Growth Fund G
60. SundaramTaxsaver TP
61. Tata Balanced Fund B
62. Tata Ethical Fund G
63. Tata Life Sciences and Technology Fund G
64. Tata Pure Equity Fund G
65. Tata Tax Saving Fund T P
66. Taurus Bonanza Fund G
67. Taurus Discovery Fund G
68. Taurus Starshare Fund G
69. Taurus Taxshield TP
70. Templeton India Growth Fund G
71. UTI Balanced Fund B
72. UTI Energy Fund G
73. UTI Equity Fund G
74. UTI Equity Tax Savings Plan TP
75. UTI Masterplus Unit Scheme 91 G
76. UTI MNC Fund G
77. UTI Pharma and Healthcare Fund G
78. UTI Nifty Fund G
79. UTI Top 100 Fund G
80. UTI Services Industries Fund G
G-Growth, B-Balanced, TP- Tax Planning
INSTITUTE OF PUBLIC ENTERPRISE
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Vol : 42 January – June, 2019 No : 1Content
Research Papers★ Effect of Work/Family Demand, Work/Family Conflict on Job
Satisfaction : A Case of SAIL Women EmployeesAnuradha Nayak & Mrinalini Pandey
★ An Analysis of Households’ Access to Toilet Facility in RuralBirbhum and it’s Implications for Public PolicySubhasish Das, Soumyadip Chattopadhyay & Raktimava Bose
★ Testing of Efficient Market Hypothesis in Indian Emerging Marketwith Reference to the Public Sector EnterprisesNenavath Sreenu
★ E-governance Best Practices in Higher Education Institutions inTelangana StateT.Papi Reddy, V.Venkata Ramana, Rajesh Ittamalla &Mohan Venkatesh Palani
★ Working of State Universities in Punjab : An Exploratory ReportMeenakshi Sharma & Anjali Mehra
Perspectives★ Contribution of Education to Income in Service Sector of Odisha :
A Gender PerspectiveAnanya Mitra & Himanshu Sekhar Rout
★ Corporate Social Responsibility (CSR) Reporting Practices ofIndian CompaniesSushanta Kumar Nandi, Meena Sunar & Kago Taping
The Journal of Institute of Public Enterprise