international transmission of monetary policy shocks the case of romanian economy
DESCRIPTION
The Academy of Economic Studies, Bucharest DOCTORAL SCHOOL OF FINANCE AND BANKING. International Transmission of Monetary Policy Shocks The Case of Romanian Economy. MSc Student: ELENA BOJE ŞTEANU Supervisor: Professor MOISĂ ALTĂR. Bucharest, 2006. Contents. Motivation - PowerPoint PPT PresentationTRANSCRIPT
International Transmission of Monetary Policy Shocks
The Case of Romanian Economy
MSc Student: ELENA BOJEŞTEANUSupervisor: Professor MOISĂ ALTĂR
The Academy of Economic Studies, BucharestDOCTORAL SCHOOL OF FINANCE AND BANKING
Bucharest, 2006
Motivation The analysis of comovements using PCA
Identifying monetary policy shocks using a reaction function for the ECB
The transmission of shocks – a SVAR approach
Concluding remarks and further research
Contents
Two-country models:- Mundell Fleming (1962);- Svensson and van Wijnbergen (1989);- Obstfeld and Rogoff (1995);- Chari, Kehoe and McGrattan (1997, 2000);- Engel and Devereux (2003).
Empirical Investigations:- Cushman and Zha (1997); - Christiano, Eichenbaum and Evans (1996, 1998);- Betts and Devereux (1999);- Bordo and Murshid (2002);- Pesaran et al. (2005).
Key References
The last five years: improved performance in terms of economic expansion, strengthening disinflation, reduction in budget deficit and unemployment.
A small open economy: a degree of financial and commercial openness exceeding 70% in the last 8 years. Main trading partner: European Union (over 70% of the total for exports, and more than 60% of the total imports. Trading currency: more than 60% settlement of exports and imports in euro, and approx. 30%in US dollar.
Capital account liberalization schedule. Romania is increasingly integrating into world markets and more precisely, into European structures.
Question: how do the commercial and financial linkages affect the Romanian main economic indicators? Is there a comovement in the economic variables, a synchronization of business cycles, or Romanian is still in an incipient phase of integration?
Romanian Economy
The method generates a new set of variables, called principal components
PC are orthogonal to each other
Each principal component (pc) is a linear combination of the original variables
The coefficients of each of the linear combinations are called loadings (or weights)
The first principal component explains the greatest amount of the total original variance
The sum of the pc variances equals the total variance of the initial system
Tracing comovements using Principal Component Analysis
The first component loading for Romania is small, which shows a lower correlation with the rest of the system. Sayek and Selover (2002) state that the first principal component might be thought of as the business cycle followed by the Western nations.
For the second component, Romania has a much higher loading than the rest of the countries. The low and positive Romania’s loading on the first component may be a sign that the macroeconomic evolution in this country was in general out of step with the rest of the group.
Tracing comovements using Principal Component AnalysisGDP growth rates
The Principal Components for GDP growth rates in Germany, France, Italy, Hungary, The Netherlands, Austria, UK and Romania
sample 1998:1-2005:4
1 2 3 4 5 6 70
0.1
0.2
0.3
0.4
0.5
0.6
0.7
0.8
0.9
1
Principal Component
Var
ianc
e E
xpla
ined
(%)
0%
10%
20%
30%
40%
50%
60%
70%
80%
90%
100%
Factor weights
Ge -0.36 -0.19 0.53 Fr -0.42 0.01 -0.22 It -0.41 0.16 0.15 Hu -0.38 0.34 -0.06 Nt -0.38 -0.29 -0.11 At -0.34 0.14 -0.65 UK -0.35 -0.10 0.40
RO 0.04 0.85 0.23
Comp. Percent
explained
Percent explained
(cumm.)
1 46.95 46.95 2 14.83 61.78 3 10.47 72.25
A higher degree of comovement in the financial sector that in the real one. The first principal component explains a substantial portion of the behaviour of interest rates across countries and can be interpreted as the common element of real interest rates.
An atypical pattern for Romania is not out of the question, considering the high correlation with the second component.
The Principal Components for real interest rates in Germany, France, Italy, Hungary, The Netherlands, Austria, UK and Romania
sample 1998:1-2005:4
1 2 3 40
0.1
0.2
0.3
0.4
0.5
0.6
0.7
0.8
0.9
1
Principal Component
Var
ianc
e E
xpla
ined
(%)
0%
10%
20%
30%
40%
50%
60%
70%
80%
90%
100%
Factor weights
Ge -0.39 0.04 0.17 Fr -0.40 0.11 0.27 It -0.40 0.09 0.10 Hu -0.33 -0.36 0.33 Nt -0.35 0.22 -0.51 At -0.34 0.17 -0.59 UK -0.35 0.22 0.34
RO -0.22 -0.85 -0.24
Comp. Percent
explained
Percent explained
(cumm.)
1 72.55 72.55 2 10.61 83.16 3 7.53 90.69
Tracing comovements using Principal Component AnalysisReal interest rates
Three general strategies for isolating monetary policy shocks:
The recursiveness assumption – based on the estimation of a reaction function for the monetary authorities- Christiano (1996);- Christiano, Eichenbaum and Evans (CEE, 1996, 1997);- Clarida, Gali and Gertler (1997);- Cushman and Zha (1997).
The narative approach- Romer and Romer (1989)
Long-run neutrality of money- Pagan and Robertson (1995)
Possible Interpretations for Monetary Policy Shocks
An exogenous monetary policy shock, εt - formalized by CEE (1998) as being the disturbance term in an equation of the form:
St = f(—t) + εt ,
where St is the instrument used by the monetary authority and f(—t) is a linear function that captures the policy makers’ responses to variations in different economic variables, as they are known at time t.
An augmented reaction function for the Euro area:
it = (1-ρ)·α+(1-ρ)·β·E[πt+n] + (1-ρ) ·γ·yt + ρ· it + εt .
Identifying the monetary policy shocks using a reaction function for the ECB
Data: ex-post available data survey data
Methodology: GMM for ex-post available data (a popular
technique in the rational-expectation context (Clarida, 1998)). Problem: selection of instruments.
OLS for survey data. Problem: constructing the data.
Identifying the monetary policy shocks using a reaction function for the ECB
Studies estimating the reaction function using data before EMU:
Gerdesmeier and Roffia (2003);Gerlach(2003);Surico (2003);
Carstensen and Colavecchio (2005).
Ex-post available data1996:01-2005:04 from ECB and Eurostat databases
Interest rates: the interbank ON interest rate, the 3M EURIBOR, and the 10Y government bond yield
Price indices: annualized HICP and alternatively the core inflation (HICP - All items, excluding energy, food, alcohol and tobacco)
Output gap: from three measures for potential GDP: a Hodrick-Prescott filter (the smoothing parameter equal to 1600 for quarterly data), a linear and a quadratic trend. The three methods yield fairly similar results.
Monetary aggregates: M3; a money gap was also used (the deviation of money growth from the reference value of a constant growth of 4.5% per annum)
Exchange rates: nominal and real effective exchange rate.
Identifying the monetary policy shocks using a reaction function for the ECB
Ex-post available data
Identifying the monetary policy shocks using a reaction function for the ECB
GMM. The instrument set includes lagged values (up to 4 lags) of the interest rate, inflation and output gap. The results are not very sensitive in respect to the number of lags used as instruments, the J-statistic supports the over-identifying restrictions implied by the model.
The standard errors were computed using the delta method. The J-statistic reported in the table is the minimized value of the objective function, p(J), the null hypothesis that the overidentifying restrictions are satisfied (Hansen’s J-test).
Estimates of forward-looking Taylor rules in the euro area
tttntt iyi )1()1()1(
Specification
2R adj 2R J-stat. p(J)
[2] 4t
SE (t-statistic)
0.05 0.00 (10.9)
-1.34 0.24 (-5.57)
0.88 0.11 (7.87)
0.712 0.05 (12.38)
0.83 0.81 (0.143)
0.71
[3] 6t
SE (t-statistic)
0.07 0.01 (6.94)
-2.27 0.26 (-4.40)
0.72 0.14 (5.07)
0.81 0.05 (15.69)
0.90 0.89 (0.168)
0.82
[4] 4t , og_qua
SE (t-statistic)
0.05 0.00 (14.5)
-1.63 0.20 (-8.06)
0.51 0.06 (7.75)
0.554 0.08 (6.22)
0.67 0.64 (0.164)
0.82
[5] 4t , 1tog
SE (t-statistic)
0.06 0.00 (19.8)
-1.70 0.18 (-9.16)
1.28 0.13 (9.18)
0.594 0.113 (5.23)
0.85 0.83 (0.101)
0.82
Ex-post available data
Identifying the monetary policy shocks using a reaction function for the ECB
Additional explanatory variables and alternative specifications for Taylor rules in the euro area
ttttntt ixyi )1()1()1()1(
Specification
2R adj2R
J-stat. p(J)
[4] 4t
))(log(neerdxt
SE (t-statistic)
0.05 0.00 (12.9)
-1.29 0.20 (-6.37)
1.06 0.08 (11.9)
0.712 0.05 (12.3)
-0.01 0.05 (-0.21)
0.87 0.85 (0.145)
0.71
[5] 4t
))(log(reerdxt
SE (t-statistic)
0.04 0.01 (9.15)
-1.02 0.26 (-3.82)
0.94 0.09 (9.69)
0.68 0.11 (5.75)
-0.02 0.05 (0.35)
0.88 0.86 (0.126)
0.77
[6] 4t
))3(log(mdxt SE (t-statistic)
0.05 0.00 (11.3)
-1.37 0.25 (-5.46)
0.86 0.10 (7.75)
0.554 0.08 (6.22)
-0.01 0.07 (-0.13)
0.82 0.80 (0.140)
0.73
[7] 4t
gapmxt _ SE (t-statistic)
0.25 0.04 (5.50)
-0.85 0.18 (4.73)
0.86 0.03 (25.5)
0.594 0.113 (5.23)
-0.007 0.00 (-1.30)
0.82 0.80 (0.140)
0.72
[8] 4t
Meuriborirt 3
SE (t-statistic)
0.05 0.00 (21.5)
-1.58 0.10 (-15.4)
0.95 0.06 (14.2)
0.66 0.04 (16.0)
-
0.76 0.73 (0.24)
0.88
[9] 4t
bondyirt _10
SE (t-statistic)
-0.38 1.78 (-0.2)
20.58 85.28 (0.24)
-13.7 58.39 (-0.2)
0.97 0.08 (11.0)
-
0.75 0.73 (0.165)
0.62
Survey dataSample period 1999:1-2005:4
Quarterly forecasts based only on real-time available information
Solid arguments in favor of using survey data:
- they are more suitable to capture the forward-attitude of the policy makers;
- variables (in particular the series for output) are only available with lags;
- data are often subject to revisions and it may take some quarters before the final series are available.
Inflation: based on the data from the Survey of Professional Forecasters (SPF), measured by the latest available forecast for the current year
A measure of the state of real economy: the Economic Sentiment Indicator (ESI). This economic index appears to be more closely tied to the Governing Council’s interest rate decisions than other variables capturing real economic activity.
Identifying the monetary policy shocks using a reaction function for the ECB
Survey data
ESI as a leading indicator for economic activity
Identifying the monetary policy shocks using a reaction function for the ECB
The rescaled ESI gap vs. the recursive output gap
-2
-1
0
1
2
1999 2000 2001 2002 2003 2004 2005 2006
Output gap HP recursive ESI gap recursive
Studies estimating the reaction function using survey data:
Carstensen and Colavecchio (2005);Gerdesmeier and Roffia (2005);
Gerlach (2004);Sauer and Sturm (2003).
Survey dataSample period 1999:1-2005:4
Identifying the monetary policy shocks using a reaction function for the ECB
Estimated forward-looking Taylor rules using survey data
tttfort iyi )1()1()1(
Explanatory variables
2R Adj2R
[6] c HICP_for ESI_gap
p-value
0.007 (0.31)
1.16 (0.00)
0.50 (0.00)
-
0.33 0.28
[7] - HICP_for ESI_gap
p-value
-
1.56 (0.00)
0.56 (0.00)
-
0.30 0.28
[8] c HICP_for ESI_gap
Ir(-1)
p-value
-0.023 (0.89)
2.68 (0.00)
2.64 (0.00)
0.88 (0.00)
0.97 0.96
[9] - HICP_for ESI_gap
Ir(-1)
p-value
-
1.51 (0.00)
2.19 (0.00)
0.86 (0.00)
0.96 0.96
The first two specifications show the results without partial adjustment. Although this restriction is rejected by the data, the estimates correspond to the original Taylor coefficients. The constant term is found to be statistically insignificant, similar to the findings of Carstensen and Colavecchio (2005).
The equation that best fits the data is considered to be [9], with an interest rate smoothing and no constant term.
Survey data
Identified monetary shocks
Identifying the monetary policy shocks using a reaction function for the ECB
Actual vs. Fitted interest rate & the Monetary Shocks
-.008
-.004
.000
.004
.01
.02
.03
.04
.05
1999 2000 2001 2002 2003 2004 2005
Monetary shocks (left axis)Actual int. rate (right axis)Fitted int. rate (right axis)
Survey data
Identifying the monetary policy shocks using a reaction function for the ECB
The results show a greater weight attached to the output gap relative to inflation, a conclusion similar to that of the studies using ex-post data.
For some specifications, the constant term is found to be statistically insignificant. The real time forward-looking specifications of the Taylor rule using the SPF
forecasts denote a stabilizing behavior and provide a better description of the actual behavior of the central bank.
Review of Taylor rule estimations for the euro area - using survey data -
Study Sample period
Carstensen and Colavecchio (2005) Gerdesmeier and Roffia (2005) - 24t Gerdesmeier and Roffia (2005) - 12t Sauer and Sturm (2003)
1999:1-2003:2 0.012 1.61 1.34 0.94 (0.019) (0.01) (0.01) (0.00) 1999:1-2003:6 -0.84 2.91 2.02 0.67 (0.97) (0.00) (0.00) (0.00) 1999:1-2003:6 1.87 1.31 1.95 0.71 (0.00) (0.00) (0.00) (0.00) 1999:1-2003:3 0.25 2.31 2.35 0.92 (0.41) (0.00) (0.01) (0.00)
Description of the variables. Quarterly data comprising:
Inflation rate (pi_ro), calculated using log deviation of the CPI from the previous quarter;
Core inflation (core1), CPI – all items excluding administrated prices;
Real interest rate (rr_ro), the difference between BUBOR 3M and the inflation rate;
Real GDP growth rate (d(y_ro));
Exchange rate appreciation (d(log(er))), as the log difference between the quarterly mean of the exchange rate and that of the previous period.
The series are seasonally adjusted using TRAMO/SEATS (Demetra). The sample period, due to data availability for the European reaction function is 1999:1-2005:4 (28 observations). CB and Eurostat databases.
The transmission of shocks – a SVAR approach
Main three methods to identify the pure innovations:
The recursive approach (the triangular Choleski decomposition)
The structural approach as advocated by Sims and Bernanke
The long-term restriction approach (the Blanchard and Quah decomposition)
The transmission of shocks – a SVAR approach
The models:
Model (A1): rr_ro, er, mshock;
Model (A2): core1, er, mshock;
Model (A3): pi_ro, er, mshock;
Model (B): y_ro, rr_ro, er, mshock.
Isolating pure shocks by Choleski ordering:
Model (A1): mshock er rr_ro;
Model (A2): mshock er core1;
Model (A3): mshock er pi_ro.
The Choleski ordering places the monetary shocks first, reaffirming their exogeneity towards the Romanian economic variables.
The transmission of shocks – a SVAR approach
Isolating pure shocks:
The Model (B) relies on an identification scheme which assumes that contemporaneously (within a quarter), the external monetary shock affects only the financial variables (the exchange rate and the real interest rate) and not the real activity in Romania.
The transmission of shocks – a SVAR approach
The identification scheme for Model (B)
y_ro rr_ro er mshock
y_ro 1 0 0 0
rr_ro 0 1 NA NA
er 0 0 1 NA
mshock 0 0 0 1
Tests for selecting the number of lags
Model (A1): rr_ro, er, mshock;
Model (A2): core1, er, mshock;
Model (A3): pi_ro, er, mshock.
The transmission of shocks – a SVAR approach
Lag LogL LR FPE AIC SC HQ 0 209.1206 NA 6.96e-12 -17.17672 -17.02946 -17.13765 1 225.3001 26.96576* 3.86e-12* -17.77501* -17.18598* -17.61874* * indicates lag order selected by the criterion
Lag LogL LR FPE AIC SC HQ 0 225.3075 NA 1.81e-12 -18.52562 -18.37836 -18.48655 1 239.7030 23.99261* 1.16e-12* -18.97525 -18.38622* -18.81898*
Lag LogL LR FPE AIC SC HQ 0 226.1659 NA 1.68e-12 -18.59716 -18.44990 -18.55809 1 275.5893 82.37246* 5.85e-14* -21.96578* -21.37675* -21.80951*
Tests for selecting the number of lags
Model (B): y_ro, rr_ro, er, mshock
The transmission of shocks – a SVAR approach
Lag LogL LR FPE AIC SC HQ 0 299.7993 NA 2.32e-16 -24.64995 -24.45360* -24.59786 1 318.8971 30.23806 1.83e-16 -24.90809 -23.92638 -24.64764 2 343.5426 30.80686* 1.02e-16* -25.62855 -23.86147 -25.15974 3 360.8508 15.86592 1.31e-16 -25.73757 -23.18512 -25.06040 4 381.3670 11.96779 2.18e-16 -26.11392* -22.77610 -25.22839*
The transmission of shocks – a SVAR approachThe impulse-response functions for (A1) model: rr_ro, er, mshock
The impulse-response functions for (A2) model: core1, er, mshock
The transmission of shocks – a SVAR approach
The impulse-response functions for (A3) model: pi_ro, er, mshock
The impulse-response functions for (B) model: y_ro, rr_ro, er, mshock
The variance decomposition for (A1) model
0
20
40
60
80
100
1 2 3 4 5 6 7 8 9 10
RR_RO ER MSHOCK
Variance Decomposition of RR_RO
0
20
40
60
80
100
1 2 3 4 5 6 7 8 9 10
RR_RO ER MSHOCK
Variance Decomposition of ER
0
20
40
60
80
100
1 2 3 4 5 6 7 8 9 10
RR_RO ER MSHOCK
Variance Decomposition of MSHOCK
The variance decomposition for (A2) model
0
20
40
60
80
100
1 2 3 4 5 6 7 8 9 10
CORE1 ER MSHOCK
Variance Decomposition of CORE1
0
10
20
30
40
50
60
70
80
1 2 3 4 5 6 7 8 9 10
CORE1 ER MSHOCK
Variance Decomposition of ER
0
20
40
60
80
100
1 2 3 4 5 6 7 8 9 10
CORE1 ER MSHOCK
Variance Decomposition of MSHOCK
The variance decomposition for (A3) model
0
20
40
60
80
100
1 2 3 4 5 6 7 8 9 10
PI_RO ER MSHOCK
Variance Decomposition of PI_RO
0
10
20
30
40
50
60
70
80
90
1 2 3 4 5 6 7 8 9 10
PI_RO ER MSHOCK
Variance Decomposition of ER
0
20
40
60
80
100
1 2 3 4 5 6 7 8 9 10
PI_RO ER MSHOCK
Variance Decomposition of MSHOCK
The transmission of shocks – a SVAR approach
The variance decomposition for (B) model
0
20
40
60
80
100
1 2 3 4 5 6 7 8 9 10
Shock1Shock2
Shock3Shock4
Variance Decomposition of Y_RO
0
20
40
60
80
100
1 2 3 4 5 6 7 8 9 10
Shock1Shock2
Shock3Shock4
Variance Decomposition of RR_RO
0
20
40
60
80
100
1 2 3 4 5 6 7 8 9 10
Shock1Shock2
Shock3Shock4
Variance Decomposition of ER
0
20
40
60
80
100
1 2 3 4 5 6 7 8 9 10
Shock1Shock2
Shock3Shock4
Variance Decomposition of MSHOCK
The transmission of shocks – a SVAR approach
VAR Granger Causality/Block Exogeneity Wald Tests Date: 07/06/06 Time: 17:38 Sample: 1999Q1 2005Q4 Included observations: 27
Dependent variable: RR_RO Excluded Chi-sq df Prob. ER 10.88218 1 0.0010
MSHOCK 2.170348 1 0.1407 All 11.87595 2 0.0026
Dependent variable: ER Excluded Chi-sq df Prob. RR_RO 3.389344 1 0.0656
MSHOCK 3.607199 1 0.0575 All 5.088246 2 0.0785
Dependent variable: MSHOCK Excluded Chi-sq df Prob. RR_RO 0.244387 1 0.6211
ER 0.510308 1 0.4750 All 0.511777 2 0.7742
The transmission of shocks – a SVAR approach
Concluding remarks The monetary shocks are isolated by estimating a reaction function for the
euro area. A more appropriate method to identify the policy shocks is to use the information set available at the moment the decision is made, i.e. survey data.
The empirical evidence does not support an impact of these shocks on the internal variables.- The number of observations used for the estimation may be inappropriate for the
analyses of monetary transmission, knowing that the monetary decisions affect the economy only with lags.
- For the major part of the analyzed period, Romania’s exchange rate regime was managed floating, but according to empirical findings and to IMF, it was a mixed regime in the form of sliding band. The theoretical results for the case of floating exchange rate may not hold if this assumption is not met.
- Moreover, the capital account has not been fully liberalized and the stages with the greatest impact on the balance of payments occurred in only in 2005. The financial openness is questionable before this period.
Concluding remarks Not European business cycles and monetary innovations
determine the internal economic indicators, but domestic economic and political developments.
- During transition period major internal disturbances affected the Romanian economy; these internal shocks include the effects of domestic political conflicts, economic and financial crises, domestic policy mistakes and so on.
- Apart from the obvious advantages incurred by the imminent accession, the unpredictable effect of the European monetary policy on the Romanian economic variables can trigger integration costs not dealt with so far.
Further research:- Alternative methods for identification of monetary policy shocks
(using the data-determined approach and the Blanchard and Quah decomposition).
- The reaction function for the ECB can be obtained by employing monthly data, using cubic splines on real GDP.
- In order to test the relevance of the theme it is useful to analyze the transmission of the identified monetary policy shocks in other countries except Romania, namely the new EU member countries. It can also be tested whether there is an asymmetry bween the effects of a negative and positive monetary shock.
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