Open Access
December 2021 The Median Probability Model and Correlated Variables
Maria M. Barbieri, James O. Berger, Edward I. George, Veronika Ročková
Author Affiliations +
Bayesian Anal. 16(4): 1085-1112 (December 2021). DOI: 10.1214/20-BA1249

Abstract

The median probability model (MPM) (Barbieri and Berger, 2004) is defined as the model consisting of those variables whose marginal posterior probability of inclusion is at least 0.5. The MPM rule yields the best single model for prediction in orthogonal and nested correlated designs. This result was originally conceived under a specific class of priors, such as the point mass mixtures of non-informative and g-type priors. The MPM rule, however, has become so very popular that it is now being deployed for a wider variety of priors and under correlated designs, where the properties of MPM are not yet completely understood. The main thrust of this work is to shed light on properties of MPM in these contexts by (a) characterizing situations when MPM is still safe under correlated designs, (b) providing significant generalizations of MPM to a broader class of priors (such as continuous spike-and-slab priors). We also provide new supporting evidence for the suitability of g-priors, as opposed to independent product priors, using new predictive matching arguments. Furthermore, we emphasize the importance of prior model probabilities and highlight the merits of non-uniform prior probability assignments using the notion of model aggregates.

Citation

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Maria M. Barbieri. James O. Berger. Edward I. George. Veronika Ročková. "The Median Probability Model and Correlated Variables." Bayesian Anal. 16 (4) 1085 - 1112, December 2021. https://doi.org/10.1214/20-BA1249

Information

Published: December 2021
First available in Project Euclid: 22 December 2020

MathSciNet: MR4381128
Digital Object Identifier: 10.1214/20-BA1249

Subjects:
Primary: 62C10
Secondary: 62F15

Keywords: Bayesian variable selection , median probability model , multicollinearity , spike and slab

Vol.16 • No. 4 • December 2021
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