Bayesian variable selection and computation for generalized linear models with conjugate priors

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Abstract

In this paper, we consider theoretical and computational connections between six popular methods for variable subset selection in generalized linear models (GLM's). Under the conjugate priors developed by Chen and Ibrahim (2003) for the generalized linear model, we obtain closed form analytic relationships between the Bayes factor (posterior model probability), the Conditional Predictive Ordinate (CPO), the L measure, the Deviance Information Criterion (DIC), the Aikiake Information Criterion (AIC), and the Bayesian Information Criterion (BIC) in the case of the linear model. Moreover, we examine computational relationships in the model space for these Bayesian methods for an arbitrary GLM under conjugate priors as well as examine the performance of the conjugate priors of Chen and Ibrahim (2003) in Bayesian variable selection. Specically, we show that once Markov chain Monte Carlo (MCMC) samples are obtained from the full model, the four Bayesian criteria can be simultaneously computed for all possible subset models in the model space. We illustrate our new methodology with a simulation study and a real dataset. © 2008 International Society for Bayesian Analysis.

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Chen, M. H., Huang, L., Ibrahim, J. G., & Kim, S. (2008). Bayesian variable selection and computation for generalized linear models with conjugate priors. Bayesian Analysis, 3(3), 585–614. https://doi.org/10.1214/08-BA323

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