1 / 25

D evelopment polic y instruments

Geographic Macro and Regional (GMR) Model for Development Policy Impact Analysis Attila Varga University of Pécs. D evelopment polic y instruments. Knowledge-based development policy Policy instruments:

hasad
Télécharger la présentation

D evelopment polic y instruments

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Geographic Macro and Regional (GMR) Model for DevelopmentPolicy Impact AnalysisAttila VargaUniversity of Pécs

  2. Development policy instruments • Knowledge-based development policy • Policy instruments: • Promoting firms’ technological potential (start-up and investment supports, tax credits, low interest rate loans or venture capital) • Local technological environment support (R&D promotion: universities and private firms, human capital improvement, support of public-private interactions in innovation, financing physical infrastructure building)

  3. Introduction • Antecedents: • Empirical modeling framework (Varga 2006) • The EcoRet model (Schalk, Varga 2004, Varga, Schalk 2004) • The GMR-Hungary model (Varga, Schalk, Koike, Járosi, Tavasszy 2008) • Dynamic KPF model for EU regions (Varga, Pontikakis, Chorafakis, 2009) • The current version (developed within the frame of the IAREG project): • GMR-EU (Varga, Járosi, Sebestyén 2009; Varga,Törma 2011)

  4. GMR: Geographic Macro and Regional Modeling

  5. Why should geography be incorporated into development policy impact modeling? • Geography and policy effectiveness: 1. Interventions happen at a certain point in space and the impacts appear there / spill over toproximate locations to a considerable extent. 2. The initialimpacts could significantly be amplified/reduced by short runagglomeration effects. 3. Cumulative long run process resulting from migration of K and L: - furtheramplification/reduction of the initial impacts in the region - the spatial structure of the economy (K, L, Y, w) might eventuallychangein a significant manner. 4. Different spatial patterns of interventions might result in significantly different growth and convergence/divergence patterns.

  6. Why „regional”

  7. Why „macro”?

  8. The particular GMR model developed for EU NUTS 2 regions includes: • a regional Knowledge Production Function (KPF)sub-model • a regional Spatial Computable General Equilibrium (SCGE)sub-model • a macro Dynamic Stochastic General Equilibrium (DSGE)sub-model (Quest III)

  9. The role of the KPF model • To generate initial TFP changes as a result of technology policy interventions • NOT for forecasting but for impact analysis

  10. Starting point: Romer-Jones KPF dA/dt =  HAAφ - HA: research input - A: the total stock of technological knowledge (codified knowledge component of knowledge production in books, patent documents etc.) - dA: the change in technological knowledge - φ: the „codified knowledge spillover parameter” - : scaling factor - : the “research productivity parameter”

  11. Empirical model, data and estimation • Data sources: • EUROSTAT New Cronos database (PAT, RD, δ, PATSTOCK) • EC DG-Research FP5 database (NET) • Regional Key Figures Publications database (PUB) • Estimation: • Pre-competitive and competitive research productivity effects are tested • Panel with temporally lagged dependent variables (1998-2002) • spatial econometrics methodology

  12. The system of equations in the KPF sub-model

  13. The regional TFP equation

  14. Modelling regional R&D impact on TFP in the KPF sub-model

  15. Require the integration of the KPF sub-model with the SCGE and MACRO sub-models After having regional TFP impact modeled… • What are the economic impacts on the regions? • What are the macro (EU level) economic impacts?

  16. The role of the SCGE model • To generate dynamic TFP changes that incorporate the effects of agglomeration externalities on labor-capital migration • Agglomeration effects depend on: - centripetal forces: local knowledge (TFP) - centrifugal forces: transport cost, congestion • To calculate the spatial distribution of L, I, Y, w for the period of simulation

  17. Main characteristics of the SCGE model • NOT for historical forecasting • The aim: to study the spatial effects of shocks (policy intervention) • Without interventions: it represents full spatial equilibrium - regional and interregional (no migration) • Shock: interrupts the state of equilibrium, the model describes the gradual process towards full spatial equilibrium

  18. The SCGE model • C-D production function, cost minimization, utility maximization, interregional trade, migration • Equilibrium: - short run (regional equilibrium) - long run (interregional equilibrium)

  19. The role of the MACRO model • Regional technology policy impacts depend to a large extent on macro level variables (fiscal/monetary policy shocks, exchange rates, international trade etc.) • Dynamising the (static) SCGE model

  20. The MACRO model • The QUEST III Dynamic stochastic general equilibrium (DSGE)model for the EURO area • A-spatial model • Macro effects of exogenous TFP shocks • Baseline: TFP growth without interventions • Policy simulations: describe the effects of TFP changes on macro variables

  21. Policy Models, Procedures State of Equilibrium MACRO model Dynamic supply and demand side effects Dynamic impact on macroeconomic variables B C Regional SCGE model Agglomeration effects on regional and interregional variables Dynamic impact on regional economic variables A Regional KPF model Regional TFP effects Policy intervention

  22. Data, software environment • The model is build for the NUTS 2 regions of the EURO zone and 3 CEE countries (Czech Republic, Hungary, Slovakia) • Regional KPF model estimated in SpaceStat • The complex model is programmed and run in MATLAB • Easy to run/make simulation changes with an Excel interface • The regional model is large considering that equilibriums have to be found for 144 interconnected (interregional trade and migration) regions • A simulation with 20 periods needs the computer time of about 45 minutes

  23. The „Europe 2020” scenario: Dynamic hard and soft impacts

  24. The „Donut” scenario

  25. The „Agglomeration and concentration” scenario Figure 5: The “Agglomeration and concentration” scenario. Percentage differences between scenario and baseline GDP values. Note: The extended GMR model system was run for the analysis

More Related