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arxiv: 1307.2449 · v1 · pith:J2SPGMF4new · submitted 2013-07-09 · 📊 stat.CO

Power-Conditional-Expected Priors: Using g-priors with Random Imaginary Data for Variable Selection

classification 📊 stat.CO
keywords priorselectionvariabledatag-priorimaginaryhierarchicalhyper-g
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The Zellner's g-prior and its recent hierarchical extensions are the most popular default prior choices in the Bayesian variable selection context. These prior set-ups can be expressed power-priors with fixed set of imaginary data. In this paper, we borrow ideas from the power-expected-posterior (PEP) priors in order to introduce, under the g-prior approach, an extra hierarchical level that accounts for the imaginary data uncertainty. For normal regression variable selection problems, the resulting power-conditional-expected-posterior (PCEP) prior is a conjugate normal-inverse gamma prior which provides a consistent variable selection procedure and gives support to more parsimonious models than the ones supported using the g-prior and the hyper-g prior for finite samples. Detailed illustrations and comparisons of the variable selection procedures using the proposed method, the g-prior and the hyper-g prior are provided using both simulated and real data examples.

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