Power-Expected-Posterior Priors for Variable Selection in Gaussian Linear Models
Dimitris Fouskakis, Ioannis Ntzoufras, David Draper

TL;DR
This paper introduces the power-expected-posterior (PEP) prior for Bayesian variable selection in Gaussian linear models, which is minimally informative, insensitive to training sample size, and achieves consistent model selection with good predictive performance.
Contribution
The paper develops the PEP prior combining power-prior and unit-information-prior ideas, enabling objective variable selection without training samples and ensuring model selection consistency.
Findings
PEP prior is more parsimonious than basic EPP.
PEP approach is robust to training sample size.
Models selected by PEP have strong out-of-sample predictive performance.
Abstract
In the context of the expected-posterior prior (EPP) approach to Bayesian variable selection in linear models, we combine ideas from power-prior and unit-information-prior methodologies to simultaneously produce a minimally-informative prior and diminish the effect of training samples. The result is that in practice our power-expected-posterior (PEP) methodology is sufficiently insensitive to the size n* of the training sample, due to PEP's unit-information construction, that one may take n* equal to the full-data sample size n and dispense with training samples altogether. In this paper we focus on Gaussian linear models and develop our method under two different baseline prior choices: the independence Jeffreys (or reference) prior, yielding the J-PEP posterior, and the Zellner g-prior, leading to Z-PEP. We find that, under the reference baseline prior, the asymptotics of PEP Bayes…
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