what drives cross-regional differences in returns to higher education?

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What Drives Cross-Regional Differences in Returns to Higher Education? Aleksey Oshchepkov (Higher School of Economics, Moscow) ERSA Congress, Barcelona, 30 August 2011

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What Drives Cross-Regional Differences in Returns to Higher Education?. Aleksey Oshchepkov (Higher School of Economics, Moscow). ERSA Congress, Barcelona, 30 August 2011. Motivation - I. - PowerPoint PPT Presentation

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Page 1: What  Drives Cross-Regional Differences  in Returns to Higher Education?

What Drives Cross-Regional Differences in Returns to Higher Education?

Aleksey Oshchepkov(Higher School of Economics, Moscow)

ERSA Congress, Barcelona, 30 August 2011

Page 2: What  Drives Cross-Regional Differences  in Returns to Higher Education?

Motivation - I• Estimation of the rate of returns to education is a topic of

hundreds of studies around the world. Most of them produce a single country-level estimate of the rate completely ignoring spatial issues (Psacharopulos&Patrinos, 2004).

• There is, however, a relatively small but growing body of literature which shows that returns to education vary significantly across regions within countries (e.g., USA: Hanushek (1981), Beeson (1991), Black et al. (2009); Great Britain: O'Leary-Sloane (2008); Spain: Casado-Lillo (2005); Portugal: Vieira et al. (2006); Sweden: Backman-Bjerke (2009); Cheque Republic: Jurajda (2004); Brazil: Behrman-Birdsall (1984)). These findings raise many questions.

Page 3: What  Drives Cross-Regional Differences  in Returns to Higher Education?

Motivation –II • The standard country-level is a simplification

• Regions with a relatively high rate of return may well exist in “low-return” countries, and vice versa. Estimating the rate of return to education at the regional level seems to be an important extension of the standard approach, since high returns in the country as a whole does not guarantee that investing in education is beneficial in all its regions.

• Implicit assumptions of the HC theory are not valid?– The theory implicitly assumes that the national labour market is unified and homogenous,

and all individuals without any restrictions may offer their labour on this market.

• Should government\firms\people increase investments in education in “high-return” regions?

– Relatively high returns to education are generally regarded as a sign of underinvestment in education. They have served as the basis for recommendations to increase investments in education and enrollment which are common in the case of developing countries; it is expected that these measures will raise incomes and reduce inequality. Is it correct to transfer these recommendations to certain regions exhibiting high rates of returns to education?

• What drives cross regional differences in returns to education?– Could potentially help to shed some light on cross-country discrepancies

Page 4: What  Drives Cross-Regional Differences  in Returns to Higher Education?

Motivation –III The number of studies estimating rates of returns to education at the

regional level is small, and the number of studies addressing these issues is even more limited.

In this paper, we 1) present new empirical evidence on significant cross-regional differences in

returns to education within one country, Russia. We are first who provides region-specific estimates of the return to higher education for Russian regions.

2) document very large differences. The returns (using basic Mincerian specification) to higher education are in the range from 32% to 140% (compared to the secondary education) against 65% for the country on average.

3) try to reveal factors associated with the rates of return to education in the regional level. For this, we regress the estimated rates of returns on a set of regional characteristics

Page 5: What  Drives Cross-Regional Differences  in Returns to Higher Education?

DataThe main reason for the limited number of studies is a lack of appropriate regionally

representative micro-data. In Russia:• LFS does not contain info on wages or incomes• RLMS data, widely used to estimate returns to education, are not regionally

representative

We use a unique set of matched employer-employee data from the Occupational Wages Survey (OWS) of 2005 and 2007.

• The OWS covers enterprises, which have more than 15 employees and are obliged to submit statistical forms to the Russian Statistical Agency (Rosstat).

• Almost all branches of the economy are covered (except state administration, agriculture with fishery, and financial sector)

• The sample represents about 80% of employment in covered industries• The size of the sample is about 700 000 each year• The average number of observations in regional subsamples is about

9500 with the minimum of about 1500. • Specific regional based design: regional subsamples formed separately

for each region

Page 6: What  Drives Cross-Regional Differences  in Returns to Higher Education?

Stage 1: estimation of the returns to educationFor each region: 1) Basic equation:

Ln (W)= α + β*Education + γ1*exp ++ γ2*exp2 + γ3*gender + γ4*ln (hours) + ε1

Education is the highest educational level achieved. We distinguish 6 levels: 1-higher and postgraduate education, 2-undergraduate, 3-vocational, 4-basic vocational, 5-complete general secondary and 6- basic general and below.

2) Extended equation:Ln (W)= α + β*Education + γ1*exp + γ2*exp2 + γ3*gender + +γ4*ln (hours) +

γ5*industry + γ6*ownership+ε2Industry at the 1-st level of NACE; ownership – public/private.

Returns to higher education (with respect to complete secondary):(Halvorsen, Palmquist, 1980)

+Correction: (Kennedy, 1981)

%100*)1(%100*%100*)1(S

H

S

S

WW

WWWe H

)1()(

21

Vare

Page 7: What  Drives Cross-Regional Differences  in Returns to Higher Education?

Stage 1: Interpreting regional returns to education• The β-coefficient can be regarded as an estimate of the return to

investments under several assumptions:– costs of receiving education are equal to the potential income which could get an

individual if instead of training he went to work (Chiswick, 1997)– assumptions on system of the taxation of labor income, uncertainty at the time of

making investment decision about the size of future incomes, etc. are needed (Heckman et al., 2003).

• All those conditions needed to interpret β as the rate of returns should hold true in each region

• There is yet a more principal difficulty due to interregional migration– The β-coefficient is an estimate for the rate of returns to education in a region if

and only if all individuals are employed in the regions where they received education.

We do not interpret the estimates of β, in terms of the return to investments in education. We treat them as conditional relative wage of workers with higher education (compared to the wage of workers with secondary education). But in order not to abandon the generally accepted terminology, we continue to "return to education" minding, however, that such use is conditional.

Page 8: What  Drives Cross-Regional Differences  in Returns to Higher Education?

Fig. 1. Point estimates of s with 95% confidence intervals (basic specification, OWS 2007)

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Page 9: What  Drives Cross-Regional Differences  in Returns to Higher Education?

Fig.2. Rates of returns adjusted for absence of some industries (% of average earnings of workers with secondary education).

0

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Скорректированные отдачи

Only in three regions (including Moscow) the absolute value of the bias is more than 5% of the initial rate.

Page 10: What  Drives Cross-Regional Differences  in Returns to Higher Education?

Overview of estimation results β-coefficients Basic equation (1) Extented equation (2)

Mean 0.526 0.647Standard deviation 0.106 0.088Coefficient of variance 0.201 0.136Maximum 0.877 0.916Minimum 0.281 0.480Difference Max - Min 0.595 0.436

•The estimates increase markedly after controlling industries and the type of ownership•Many workers with higher education work in public sector (health, education), where wages are low

•Transition from the basic to the extended wage equation reduces inter-regional variation in the rate of returns to higher education, but it is still very high

•A substantial part of this variation is caused either by differences between regions in the wage structure or by differences in the distribution of workers in different jobs, or by both these factors

• A strong correlation between regional estimates of returns obtained from the basic and extended wage equations (more than 0.9). In other words, the ranking of regions by the rate of return to higher education is virtually independent of the specification we use

Page 11: What  Drives Cross-Regional Differences  in Returns to Higher Education?

Читинская обл.

Еврейская АО

г.Москва

Московская обл.

Калужская обл.

г.Санкт-Петербург

Самарская обл.

Россия

респ.Адыгея

Сахалинская обл. Алтайский край

респ.Алтай респ.Тыва

респ. Коми

40

60

80

100

120

140

160

180

40 60 80 100 120 140 160 180

Отдача на ВО (2005)

Отд

ача

на В

О (2

007)

Fig.4. Regional rates of returns to higher education in 2005 and 2007

Page 12: What  Drives Cross-Regional Differences  in Returns to Higher Education?

61.64 to 81.56

81.56 to 90.55

90.55 to 102.84

102.84 to 149.95

M os c ow (71 .4% )

S .P eters bu rg (65 .6% )

Fig.3. Mapping the returns to higher education in Russia

Page 13: What  Drives Cross-Regional Differences  in Returns to Higher Education?

Stage 2: What drives cross-regional differences in returns to education?

There are only a limited number of studies attempting to explain cross-regional differences in returns to education. We have managed to find only two published articles where these differences are modeled explicitly (Beeson (1991); Black et al., (2009), both are for USA). Both of them view the differences as a result of asymmetric influence of compensating mechanism to workers with different level of education. We use this approach as a starting point of our analysis.

We regress estimated returns on a set of regional characteristics:

βj = β0 + φb*RCj + ξj

Page 14: What  Drives Cross-Regional Differences  in Returns to Higher Education?

Asymmetric compensating mechanism

• “Standard” compensating mechanism in the regional labour markets: workers receive wage compensations for living in regions or cities with relatively less favorable characteristics (e.g., Roback (1982,1988), Dumond et al., (1994))

• However different (groups of) workers may receive different compensations for living in the same conditions, suggesting the existence of differences in relative wages. Due to:– different preferences– different willingness to pay for favorable regional

characteristics (income effect)– different propensities to move

Page 15: What  Drives Cross-Regional Differences  in Returns to Higher Education?

What regional characteristics (RC) matter?

Previous studies [Bignebat (2004), Berger et al., (2008), Oshchepkov (2009)] suggest:

• Price level• Flat price (for 1 sq.m)• Crime rate • Air pollutions• Medical staff (per 10 000 citizens) • Average temperature in January • Life expectancy • Unemployment rate• Net migration• …

Page 16: What  Drives Cross-Regional Differences  in Returns to Higher Education?

Stage 2: alternative explanations?

• How is the return connected with the stock? Connection with the proportion of workers with higher education

Negative relation: diminishing marginal return (Middendorf (2008) for EU countries).

Positive relation: Black et al (2009) for MSA across USA. Russia: HC externalities in the city level (Muravyev (2008))

• Level of economic developmentCross-country comparisons of rates of returns (Psacharopulos & Patrinos (2004) :

more developed have lower returns, but relation may be non-linear.• Employment in public sectorPositive relation expected, which is suggested by our descriptive analysis and by

the fact that in Russia returns to education in public sector are higher than in private sector.

Page 17: What  Drives Cross-Regional Differences  in Returns to Higher Education?

 Dependent variable: return to higher education (ln β) 2005 2007 2005

+20072005

+20072005

+2007Life expectancy (ln) -0,842** -1,334*** -1,044*** -0,989*** -1,011***

Unemployment rate (ln) 0,010** 0,129*** 0,114***

Unemployment rate, HE (ln) -0,014 -0,017

Unemployment rate, SE (ln) 0,138*** 0,147***

Change in unemployment rate among HE (control for regional shocks)

-0,002

Change in unemployment rate among SE (control for regional shocks)

-0,077

Dummy for 2007 0,031 0,021 0,021

Constant 2,891** 4,923*** 3,699*** 3,403*** 3,477***

R sq. adjusted 0,207 0,393 0,298 0,333 0,343

N 79 79 158 158 158

Note: OLS with Huber-White standard errors.

Correlations between regional returns and regional characteristics

Page 18: What  Drives Cross-Regional Differences  in Returns to Higher Education?

 Dependent variable: return to higher education (ln β) OLS Median

regression Jacknife RE

Life expectancy (ln) -1,066*** -0,478** -0,989*** -0,806***

Unemployment rate, HE (ln) -0,005 -0,018 -0,014 0,010

Unemployment rate, SE (ln) 0,133*** 0,170*** 0,138*** 0,107***

Dummy for 2007 0,026 -0,008 0,021 0,014

Constant 3,724*** 1.21 3,403*** 2,684**

R-sq., pseudo R-sq or X-sq 0,293 0,192 0,333 48,75

N 154 158 158 158

Note: pool 2005+2007 years

Robustness check

Page 19: What  Drives Cross-Regional Differences  in Returns to Higher Education?

 Dependent variable: return to higher education (ln β)

2005+2007

2005+2007

2005+2007

2005+2007

Life expectancy (ln) -0,914*** -0,985*** -0,822*** -0,679***

Unemployment rate, HE (ln) -0,019 -0,012 -0,019 -0,018

Unemployment rate, SE (ln) 0,139*** 0,138*** 0,111*** 0,110***

Dummy for 2007 0,022 0,02 -0,001 -0,005

“STOCK” of HE workers (ln) -0,035 -0,047

GRP per cap (ln) 0,005 0,019

Proportion of employed in public sector (ln) 0,107* 0,124**

Constant 3,094*** 3,324*** 2,439** 1,573

R squared adjusted 0,340 0,334 0,348 0,360

N 158 158 158 158

Note: OLS with Huber-White standard errors.

Correlations with other regional characteristics

Page 20: What  Drives Cross-Regional Differences  in Returns to Higher Education?

Summary-I• This paper belongs to a relatively small number

of studies showing that rates of returns to education may vary greatly across regions within a country.

• We first provide region-specific estimates of the return to higher education for regions-subjects of the Russian Federation.

• The results indicate that the returns to higher education extremely vary across Russian regions.

Page 21: What  Drives Cross-Regional Differences  in Returns to Higher Education?

Summary-II• The standard country-level approach to estimate the returns to

education is an oversimplification. – The Russian case clearly shows that it may hide behind a huge regional

variation. In some Russian regions the rates of return to higher education are comparable with the rates of return existing developing countries, while in other regions the rates correspond to those existing in developed countries.

• Assessing the rate of returns to education at the regional level seems to be an important extension of the standard country-level procedure. – It is difficult to expect that the single country-level estimate of the rate of

return to education will be linked (as required by theory) with the decision to invest in obtaining or continuing education, as this decision is made taking into account conditions at the regional or local level.

Page 22: What  Drives Cross-Regional Differences  in Returns to Higher Education?

Summary-IIIOur robust findings: the return to higher education is

higher in regions – which are less attractive for living– with higher unemployment rate– with higher proportion of employment in the public

sector.

Relatively high returns to higher education in some regions should not be interpreted as a signal for investment, these are rather a signal of “bad” regional performance (surprisingly?)