Panel VAR Models with Spatial Dependence
I consider a panel vector-autoregressive model with cross-sectional dependence of the disturbances characterized by a spatial autoregressive process. I propose a three-step estimation procedure. Its first step is an instrumental variable estimation that ignores the spatial correlation. In the second step, the estimated disturbances are used in a multivariate spatial generalized moments estimation to infer the degree of spatial correlation. The final step of the procedure uses transformed data and applies standard techniques for estimation of panel vector-autoregressive models. I compare the small-sample performance of various estimation strategies in a Monte Carlo study.
Year of publication: |
2009-03
|
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Authors: | Mutl, Jan |
Institutions: | Department of Economics and Finance Research and Teaching, Institut für Höhere Studien (IHS) |
Subject: | Spatial PVAR | Multivariate dynamic panel data model | Spatial GM | Spatial Cochrane-Orcutt transformation | Constrained maximum likelihood estimation |
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