Bayesian Group Bridge for Bi-level Variable Selection.

Comput Stat Data Anal
Authors
Abstract

A Bayesian bi-level variable selection method (BAGB: Bayesian Analysis of Group Bridge) is developed for regularized regression and classification. This new development is motivated by grouped data, where generic variables can be divided into multiple groups, with variables in the same group being mechanistically related or statistically correlated. As an alternative to frequentist group variable selection methods, BAGB incorporates structural information among predictors through a group-wise shrinkage prior. Posterior computation proceeds via an efficient MCMC algorithm. In addition to the usual ease-of-interpretation of hierarchical linear models, the Bayesian formulation produces valid standard errors, a feature that is notably absent in the frequentist framework. Empirical evidence of the attractiveness of the method is illustrated by extensive Monte Carlo simulations and real data analysis. Finally, several extensions of this new approach are presented, providing a unified framework for bi-level variable selection in general models with flexible penalties.

Year of Publication
2017
Journal
Comput Stat Data Anal
Volume
110
Pages
115-133
Date Published
2017 Jun
ISSN
0167-9473
DOI
10.1016/j.csda.2017.01.002
PubMed ID
28943688
PubMed Central ID
PMC5603248
Links
Grant list
R01 GM069430 / GM / NIGMS NIH HHS / United States
U01 NS041588 / NS / NINDS NIH HHS / United States