Benchmark Priors Revisited : On Adaptive Shrinkage and the Supermodel Effect in Bayesian Model Averaging

Default prior choices fixing Zellner's g are predominant in the Bayesian Model Averaging literature, but tend to concentrate posterior mass on a tiny set of models. The paper demonstrates this supermodel effect and proposes to address it by a hyper-g prior, whose data-dependent shrinkage adapts posterior model distributions to data quality. Analytically, existing work on the hyper-g-prior is complemented by posterior expressions essential to fully Bayesian analysis and to sound numerical implementation. A simulation experiment illustrates the implications for posterior inference. Furthermore, an application to determinants of economic growth identifies several covariates whose robustness differs considerably from previous results.
Publication date: September 2009
ISBN: 9781451873498
$18.00
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Environmental- Pollution Control , Bayesian model averaging , hyper-g prior , shrinkage factor , Zellner&amp , #x2019 , s g prior , model uncertainty , growth econometrics , noise , probabilities , statistics , bayes factor , equation

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