We consider the problem of variable selection in linear regression models. Bayesian model averaging has become an important tool in empirical settings with large numbers of potential regressor and relatively limited numbers of observations. We examine the effect of a variety of prior assumptions on the inference concerning model size, posterior inclusion probabilities of regressors and on predictive performance. We illustrate these issues in the context of cross-country growth regressions using three datasets with 41-67 potential drivers of growth and 72-93 observations. Finally, we recommend priors for use in this and related contexts. Copyright (C) 2009 John Wiley & Sons, Ltd.
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Univ New S Wales, Australian Grad Sch Management, Sydney, NSW 2052, AustraliaUniv New S Wales, Australian Grad Sch Management, Sydney, NSW 2052, Australia
Yau, P
Kohn, R
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Univ New S Wales, Australian Grad Sch Management, Sydney, NSW 2052, AustraliaUniv New S Wales, Australian Grad Sch Management, Sydney, NSW 2052, Australia
Kohn, R
Wood, S
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Univ New S Wales, Australian Grad Sch Management, Sydney, NSW 2052, AustraliaUniv New S Wales, Australian Grad Sch Management, Sydney, NSW 2052, Australia
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Natl Grad Inst Policy Studies GRIPS, Tokyo 1068677, Japan
Rimini Ctr Econ Anal, Rimini, ItalyNatl Grad Inst Policy Studies GRIPS, Tokyo 1068677, Japan
Leon-Gonzalez, Roberto
Montolio, Daniel
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Univ Barcelona, Fac Econ & Empresa, Barcelona 08034, Spain
Barcelona Inst Econ, Barcelona, SpainNatl Grad Inst Policy Studies GRIPS, Tokyo 1068677, Japan