Limited Information Bayesian Model Averaging for Dynamic Panels with Short Time Periods

Bayesian Model Averaging (BMA) provides a coherent mechanism to address the problem of model uncertainty. In this paper we extend the BMA framework to panel data models where the lagged dependent variable as well as endogenous variables appear as regressors. We propose a Limited Information Bayesian...

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Bibliographic Details
Main Author: Mirestean, Alin
Other Authors: Chen, Huigang, Tsangarides, Charalambos
Format: eBook
Language:English
Published: Washington, D.C. International Monetary Fund 2009
Series:IMF Working Papers
Subjects:
Wp
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Collection: International Monetary Fund - Collection details see MPG.ReNa
Description
Summary:Bayesian Model Averaging (BMA) provides a coherent mechanism to address the problem of model uncertainty. In this paper we extend the BMA framework to panel data models where the lagged dependent variable as well as endogenous variables appear as regressors. We propose a Limited Information Bayesian Model Averaging (LIBMA) methodology and then test it using simulated data. Simulation results suggest that asymptotically our methodology performs well both in Bayesian model selection and averaging. In particular, LIBMA recovers the data generating process very well, with high posterior inclusion probabilities for all the relevant regressors, and parameter estimates very close to the true values. These findings suggest that our methodology is well suited for inference in dynamic panel data models with short time periods in the presence of endogenous regressors under model uncertainty
Physical Description:43 pages
ISBN:9781451872217