Parameter estimation and inference with spatial lags and cointegration
We study dynamic panel data models where the long run outcome for a particular cross-section is affected by a weighted average of the outcomes in the other cross-sections. We show that imposing such a structure implies several cointegrating relationships that are nonlinear in the coefficients to be...
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Sprache: | eng |
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Wien
Inst. für Höhere Studien (IHS)
2013
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Schriftenreihe: | Reihe Ökonomie
296 |
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Zusammenfassung: | We study dynamic panel data models where the long run outcome for a particular cross-section is affected by a weighted average of the outcomes in the other cross-sections. We show that imposing such a structure implies several cointegrating relationships that are nonlinear in the coefficients to be estimated. Assuming that the weights are exogenously given, we extend the dynamic ordinary least squares methodology and provide a dynamic two-stage least squares estimator. We derive the large sample properties of our proposed estimator and investigate its small sample distribution in a simulation study. Then our methodology is applied to US financial market data, which consist of credit default swap spreads, firm specific and industry data. A "closeness" measure for firms is based on input-output matrices. Our estimates show that this particular form of spatial correlation of credit default spreads is substantial and highly significant. -- dynamic ordinary least squares ; cointegration ; credit risk ; spatial autocorrelation |
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Beschreibung: | Parallel als Online-Ausg. erschienen Adresse des Verl.: 1060 Wien, Stumpergasse 56 |
Beschreibung: | 60 S. 30 cm |