Consistent High-Dimensional Bayesian Variable Selection via Penalized Credible Regions

Volume: 107, Issue: 500, Pages: 1610 - 1624
Published: Aug 14, 2012
Abstract
For high-dimensional data, particularly when the number of predictors greatly exceeds the sample size, selection of relevant predictors for regression is a challenging problem. Methods such as sure screening, forward selection, or penalized regressions are commonly used. Bayesian variable selection methods place prior distributions on the parameters along with a prior over model space, or equivalently, a mixture prior on the parameters having...
Paper Details
Title
Consistent High-Dimensional Bayesian Variable Selection via Penalized Credible Regions
Published Date
Aug 14, 2012
Volume
107
Issue
500
Pages
1610 - 1624
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