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Growth and Volatility in EU Regions: Does Space Matter? Author: Vicente Rios Universidad Pública de Navarra OUTLINE • Scientific Problem • Theoretical Framework • Quantitative Analaysis • Contribution 1. The Scientific Problem What is the relationship between volatility and growth in European regions? Empirical studies in this topic at the regional level: i) are few ii) do not account for unobserved spatial heterogeneity iii) reach diverging conclusions Sample regions (N) and time (T) Econometric Method Sign and significance of the coefficient Martin and Rogers (2000) N=90 European Regions T=1979-1992 Cross-Section Negative and significant at the 5% level Falk and Sinabell (2009) N= 991 NUTS3 Regions T=1995-2004 Spatial Analysis, CrossSection Positive and significant at the 5% level Authors Focus: i) Re-Examine the relationship between volatility and growth (spatial panel) ii) Explore the role played by spatial spillovers and interdependences 2. Theoretical Framework There are many reasons to believe that: i) volatility and growth are connected Positively: Schumpeter (1939); Mirman (1971), Black (1987); Bean (1990); Hall, (1991); Saint-Paul (1993); Helpman and Trajtenberg (1998), Negatively: Pindyck (1982); Bernanke (1983) Ambiguously: De Hek (1999), (2002); Blackburn and Galindev (2003); Manuelli and Jones (2005); Galindev (2007) ii) space might be a channel of difussion (with some frictions) Spatially Augmented Growth Models: López-Bazo et. al (2004), Ertur and Koch (2007), M. Fisher (2009) iii) Work in progress derive a SDM equation from - stochastic endogenous growth model with spatial diffussion , iid productivity shocks, CES function 3. Quantitative Analysis Sample: 198 NUTS 2 Regions (EU 13 + Norway + Switzerland) Time:1980-2010 Model Y: GDP pc growth rate Key variable: Volatility (Std GDP pc growth rate) Controls: Investment, Initial GDP pc, Industry Mix, Pop, Agglomeration Methodology - Estimation and Selection of Spatial Panel Data Simulation: Internal to region + Neighbor’s volatility effect Robustness Analysis 3. Quantitative Analysis Mixed Approach: recommended by Elhorst(2010) - Estimate non spatial models - Use Robust Lagrande Multiplier Tests to check the spatial dependence form (Spatial Error, Spatial Lag). - W Matrix: distance matrix, exogeneity Result 1: Reject the null of no spatial dependence in all cases Result 2: Time Effects are jointly significant (not shown) • Result 3: Spatial Durbin best describes the data 3. Quantitative Analysis Check if Spatial Durbin can be simplified to Spatial Lag or Spatial Error versions Model Selection Tests Result 4: Selected Model is Spatial Durbin 3. Quantitative Analysis Key Result 1: Volatility and Growth are positively related Key Resul 2: Spatial spillovers account for half of the impact 3. Quantitative Analysis: Robustness Results are robust to different W’s 4. Contributions • • European regions with high volatility tend to grow faster Spatial spillovers are a key factor reinforcing the effect of internal volatility on growth • The result is robust to spatial weight matrixes • Expected (Link Theory-Empirical Model)