4.2 Article

Empirical Bayes vs. fully Bayes variable selection

Journal

JOURNAL OF STATISTICAL PLANNING AND INFERENCE
Volume 138, Issue 4, Pages 888-900

Publisher

ELSEVIER
DOI: 10.1016/j.jspi.2007.02.011

Keywords

hyperparameter uncertainty; model selection; objective Bayes

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For the problem of variable selection for the normal linear model, fixed penalty selection criteria such as AIC, C-p, BIC and RIC correspond to the posterior modes of a hierarchical Bayes model for various fixed hyperparameter settings. Adaptive selection criteria obtained by empirical Bayes estimation of the hyperparameters have been shown by George and Foster [2000. Calibration and Empirical Bayes variable selection. Biometrika 87(4), 731-747] to improve on these fixed selection criteria. In this paper, we study the potential of alternative fully Bayes methods, which instead margin out the hyperparameters with respect to prior distributions. Several structured prior formulations are considered for which fully Bayes selection and estimation methods are obtained. Analytical and simulation comparisons with empirical Bayes counterparts are studied. (C) 2007 Elsevier B.V. All rights reserved.

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