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THE EFFECTS OF PUBLIC SECTOR INVESTMENTS ON ECONOMIC GROWTH OF CROATIA Saša Drezgić, PhD University of Rijeka Faculty of Economics 14 th Dubrovnik Economic Conference June, 2008
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2 CONTENTS: INTRODUCTION EMPIRICAL CONTRIBUTIONS OVERVIEW OF CROATIAN ECONOMY ECONOMIC FEATURES OF CROATIAN REGIONS DATASET CONSTRUCTION EMPIRICAL ANALYSIS CONCLUSION
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3 INTRODUCTION REDUCTION OF PUBLIC INVESTMENTS LACK OF RESEARCH FEATURES OF CAPITAL ACCUMULATION IN CROATIA GREAT INFRASTRUCTURE NEEDS
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4 EMPIRICAL CONTRIBUTIONS Abramowitz (1956) and Solow (1957) Mera (1973), Looney and Frederiksen (1981), Biehl (1986) Aschauer (1989, 1990), Munnel (1990), Holtz- Eakin (1994) Baltagi and Pinnoi (1995) Perreira (1999, 2000, 2001), Sturm (1998), Kamps (2004, 2005), Voss (2002), Mittnik, Neumman (2001)
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5 ECONOMETRIC MODEL APPLIED PRODUCTION FUNCTION FRAMEWORK – TIME SERIES APPROACH SPATIAL ECONOMETRIC METHODS VECTOR-AUTOREGRESSION MODELS (VAR) PANEL DATA REGRESSION
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6 OVERVIEW OF CROATIAN ECONOMY (1996-2006) HIGH INFLATION TILL 1997 GDP GROWTH RATE STABILE FROM 1997 – AVERAGE 4% HIGH RATE OF UNEMPLOYMENT FIXED EXCHANGE RATE (APPRECIATION OF CURRENCY HIGH TAX BURDEN DETERIORATING TRADE BALANCE
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7 CROATIAN REGIONS FORMATION OF REGIONS HIGH INCOME INEQUALITY DIVERGENCE OF GROWTH
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9 GDP/NCS PER CAPITA IN CROATIAN COUNTIES
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10 GDP PER CAPITA, BY COUNTIES (2006/1997)
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11 AVERAGE GROWTH RATES (1997-2006)
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12 GINI COEFFICIENTS (1996-2006)
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13 DESCRIPTION OF DATA AND METHODOLOGY TIME SPAN 1997-2006 annual GDP of the Croatian economy, annual investments (given by expenditure- based GDP accounting) labor of enterprises per counties (small entrepreneurs are excluded) average annual wage per counties average unemployment in the Croatian counties
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14 DERIVATION OF GDP PER COUNTIES REVENUE-BASED ACCOUNTING OF GDP PROXY FOR GDP DISTRIBUTION: AVERAGE INCOME PER COUNTIES OBTAINED BY MULTIPLYING AVERAGE WAGES PER COUNTIES AND LABOR EMPLOYED HIGH CORRELATION WITH OFFICIAL DATA (2001-2004)
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15 GDP COMPARISON 2001
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16 GDP COMPARISON 2002
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17 GDP COMPARISON 2003
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18 GDP COMPARISON 2004
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19 ESTIMATION OF CAPITAL STOCKS UNOFFICIAL ESTIMATES OF CBS 1999-2003 PIM METHODOLOGY GEOMETRIC RATE OF DEPRECIATION APPLIED DEPRECIATION RATES VARY FOR EACH SECTOR! PUBLIC SECTOR: E, F, I, L, M, N
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20 CAPITAL STOCK MEASURMENT PHYSICAL MEASURE OF CAPITAL STOCK MONETARY APPROACH: PERPETUAL INVENTORY METHOD (PIM)
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21 APPLICATION OF PIM IN PRACTICE
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22 FEATURES OF PIM FREQUENTLY USED – Jacob et al. (1997), Sturm and de Haan (1995), Sturm (1998), Munnel (1990), U.S. Bureau of Economic Analysis (1999), OECD (2001), Kamps (2004,2005) GENERAL FORMULA:
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23 CROATIAN NCA
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24 DEPRECIATION RATES
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25 OTHER VARIABLES LABOR DATA – CBS OFFICIAL STATISTICS (PRIVATE ENTERPRENEURS ARE NOT INCLUDED) UNEMPLOYMENT DATA – UNRELIABLE DUMMY VARIABLE – FINANCIAL CRISES IN YEAR 1999
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26 ESTIMATION RESULTS NUMEROUS MODELS USED – ROBUSTNESS OF RESULTS TIME SERIES APPROACH NOT POSSIBLE COMPARISON OF DIFFERENT SOURCES SPILLOVER EFFECTS
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27 ESTIMATION EFFICIENCY TESTING POOLABILITY (Chow test) FIXED OR RANDOM EFFECTS? HAUSMAN TEST LM BREUCH-PAGAN TEST
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28 ESTIMATION RESULTS (MODEL 1) MODEL 1 MODEL 2 MODEL 3
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29 RESULTS FIXED EFFECTS ESTIMATOR IS CONSISTENT POSITIVE SHORT-TERM EFFECTS IN THE SECTOR OF CONSTRUCTION (2,8 %) AND TRANSPORT (7%) SHORT-TERM EFFECTS ON SOCIAL CAPITAL AMBIGUOUS LONG-TERM EFFECTS SHOW DIFFERENT RESULTS – POSITIVE EFFECTS OF PUBLIC PHYSICAL CAPITAL AND TRANSPORT
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30 ASSUMPTION OF LINEARITY
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31 COMPARISON OF DIFFERENT DATA SOURCES OFFICIAL DATA 2001-2004 AUTHOR’S DATA 2001-2004 AUTHOR’S DATA 1997-2006 SIGNIFICANT DIFFERENCES
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32 SUMMARY – DATASETS COMPARISON
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33 RESULTS REASONS FOR COMPARISON ESTIMATED COEFFICIENTS FOLLOW THE SAME SIGN BUT DIFFERENT VALUE PHYSICAL SECTOR CAPITAL (13,6% - 27%) CONSTRUCTION SECTOR (6,9% - 13,7%) EXCEPTION: SOCIAL CAPITAL
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34 MEASURMENT ERROR DIFFERENCING SCHEMES (Grilliches and Hausman, 1986, Baltagi and Pinnoi, 1995) CONSTRUCTION SECTOR - STABILE COEFFICIENTS VALUES CONCEQUENCES OF MIXING THE SHORT- TERM AND LONG TERM EFFECTS EXAMPLE OF LIČKO-SENJSKA COUNTY
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35 PUBLIC INVESTMENT AND PUBLIC CAPITAL STOCKS DYNAMICS
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36 LONG-DIFFERENCES ESTIMATION MODEL 1 MODEL 2 MODEL 3
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37 LONG-DIFFERENCES ESTIMATION (CASE 1)
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38 LONG-DIFFERENCES ESTIMATION (CASE 2)
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39 INSTRUMENTAL VARIABLES ESTIMATION CIRCUMVENT THE ENDOGENEITY PROBLEM, MEASURMENT ERROR Holtz-Eakin, Newey and Rosen (1988) PROPOSE FIRST-DIFFERENCES AND IV ESTIMATOR INSTRUMENTS USED: FIRST AND SECOND DIFFERENCES OF THE CAPITAL VARIABLES USED IN PARTICULAR MODEL
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40 INSTRUMENTAL VARIABLES ESTIMATION
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41 SPILLOVER EFFETS ESTIMATION MODEL 1 MODEL 2 MODEL 3
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42 RESULTS CONFIRMATION OF HIGH SPILLOVER EFFECTS (9,9 % PHYSICAL PUBLIC CAPITAL, 6,3% F SECTOR) EXAMPLES: ZAGREBAČKA, LIČKO- SENJSKA COUNTY HIGWAY INVESTMENT SPILLOVERS (Boarnet 1996) “POINT” AND “NETWORK” INFRASTRUCTURE EFFECTS IN CROATIA
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43 DISCUSSION METHODOLOGY RELIES ON Baltagi and Pinnoi (1995), Boarnet (1996), Sturm (1998), Ligthart (2000), Kamps (2004,2005) DIFFERENT MODELS USED CONSIDERATION OF LONG-TERM AND SHORT TERM EFFECTS (Baxter-King, 1993) DIFFERENT DATASETS USED COMPARISON WITH OTHER RESEARCH POSITIVE AND SIGNIFICANT RESULTS FOR CONSTRUCTION (F) SECTOR SPILLOVER EFFECTS
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44 CONCLUSION POTENTIAL CONTRIBUTION LIMITATIONS OF RESEARCH FUTURE RESEARCH
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45 LIMITATIONS OF RESEARCH SEVERAL SOURCES: NO OFFICIAL DATASETS, PROXY, PIM METHODOLOGY, PANEL REGRESSION TECHNIQUE – AVERAGE COEFFICIENT, COBB-DOUGLAS FUNCTION HUMAN CAPITAL BROADER INSTITUTIONAL FRAMEWORK EFFECTS
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46 FUTURE RESEARCH NEW DATASETS NONLINEAR TECHNIQUES, SPATIAL MODELS, DYNAMIC PANEL MODELS R&D VARIABLE OTHER INSTITUTIONAL FACTORS
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47 THANK YOU!
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