Mixtures of g Priors for Bayesian Variable Selection
Intelligent Sensing Anywhere (Portugal)
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Abstract
Zellner's g prior remains a popular conventional prior for use in Bayesian variable selection, despite several undesirable consistency issues. In this article we study mixtures of g priors as an alternative to default g priors that resolve many of the problems with the original formulation while maintaining the computational tractability that has made the g prior so popular. We present theoretical properties of the mixture g priors and provide real and simulated examples to compare the mixture formulation with fixed g priors, empirical Bayes approaches, and other default procedures.
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5Topics & keywords
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Keywords
- Prior probability
- Consistency (knowledge bases)
- Bayesian probability
- Bayes' theorem
- Computer science
- Bayes factor
- Econometrics
- Mathematics
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