Accelerated Bayesian Reciprocal LASSO

Erina Paul, Jingyu He, Himel Mallick*

*Corresponding author for this work

Research output: Journal Publications and ReviewsRGC 21 - Publication in refereed journalpeer-review

Abstract

Bayesian reciprocal LASSO (BRL) is a recently proposed nonlocal regularization method for Bayesian linear regression models. This paper develops a modified version of BRL, accommodating faster posterior sampling than published methods, by bypassing the use of auxiliary latent variables. We present a slice-within-Gibbs algorithm based on the elliptical slice sampler that matches the predictive accuracy of previous BRL implementations. Simulation studies and real data analyses show that the new method (XBRL) outperforms its Bayesian cousin (BRL) in out-of-sample prediction across a wide range of scenarios while offering the advantage of faster posterior computation. We have implemented the XBRL algorithm as part of the R package BayesRecipe available at: https://github.com/himelmallick/BayesRecipe. © 2023 Taylor & Francis Group, LLC.
Original languageEnglish
Number of pages17
JournalCommunications in Statistics: Simulation and Computation
Online published20 Nov 2023
DOIs
Publication statusOnline published - 20 Nov 2023

Research Keywords

  • Bayesian regularization
  • Nonlocal prior
  • Penalized regression
  • Reciprocal LASSO
  • Slice sampling
  • Variable selection

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