Panel data inference under spatial dependence
This paper focuses on inference based on the standard panel data estimators of a one-way error component regression model when the true specification is a spatial error component model. Among the estimators considered, are pooled OLS, random and fixed effects, maximum likelihood under normality, etc. The spatial effects capture the cross-section dependence, and the usual panel data estimators ignore this dependence. Two popular forms of spatial autocorrelation are considered, namely, spatial autoregressive random effects (SAR-RE) and spatial moving average random effects (SMA-RE). We show that when the spatial coefficients are large, test of hypothesis based on the standard panel data estimators that ignore spatial dependence can lead to misleading inference.
Year of publication: |
2010
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Authors: | Baltagi, Badi H. ; Pirotte, Alain |
Published in: |
Economic Modelling. - Elsevier, ISSN 0264-9993. - Vol. 27.2010, 6, p. 1368-1381
|
Publisher: |
Elsevier |
Keywords: | Panel data Hausman test Random effect Spatial autocorrelation Maximum likelihood |
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