Pooling in Dynamic Panel-Data Models: An Application to Forecasting GDP Growth Rates |
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Authors: | André J. Hoogstrate Franz C. Palm Gerard A. Pfann |
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Affiliation: | 1. CentER, Tilburg University , NL-5000 LE Tilburg, The Netherlands E-mail: a.j.hoogstrate@kub.nl;2. Faculty of Economics and Business Administration , Maastricht University , NL-6200 MD Maastricht, The Netherlands E-mail: f.palm@ke.unimaas.nl;3. Faculty of Economics and Business Administration , Maastricht University , NL-6200 MD Maastricht, The Netherlands;4. Centre for Economic Policy Research , London , NW1 45A , United Kingdom E-mail: g.pfann@ke.unimaas.nl |
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Abstract: | ![]() In this article, we analyze issues of pooling models for a given set of N individual units observed over T periods of time. When the parameters of the models are different but exhibit some similarity, pooling may lead to a reduction of the mean squared error of the estimates and forecasts. We investigate theoretically and through simulations the conditions that lead to improved performance of forecasts based on pooled estimates. We show that the superiority of pooled forecasts in small samples can deteriorate as the sample size grows. Empirical results for postwar international real gross domestic product growth rates of 18 Organization for Economic Cooperation and Development countries using a model put forward by Garcia-Ferrer, Highfield, Palm, and Zellner and Hong, among others illustrate these findings. When allowing for contemporaneous residual correlation across countries, pooling restrictions and criteria have to be rejected when formally tested, but generalized least squares (GLS)-based pooled forecasts are found to outperform GLS-based individual and ordinary least squares-based pooled and individual forecasts. |
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Keywords: | Contemporaneous disturbance correlation Linear restrictions Systems of regression equations |
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