Open Access
2024 Estimating Sparse Direct Effects in Multivariate Regression With the Spike-and-Slab LASSO
Yunyi Shen, Claudia Solís-Lemus, Sameer K. Deshpande
Author Affiliations +
Bayesian Anal. Advance Publication 1-25 (2024). DOI: 10.1214/24-BA1430

Abstract

The multivariate regression interpretation of the Gaussian chain graph model simultaneously parametrizes (i) the direct effects of p predictors on q outcomes and (ii) the residual partial covariances between pairs of outcomes. We introduce a new method for fitting sparse versions of these models with spike-and-slab LASSO (SSL) priors. We develop an Expectation Conditional Maximization algorithm to obtain sparse estimates of the p×q matrix of direct effects and the q×q residual precision matrix. Our algorithm iteratively solves a sequence of penalized maximum likelihood problems with self-adaptive penalties that gradually filter out negligible regression coefficients and partial covariances. Because it adaptively penalizes individual model parameters, our method is seen to outperform fixed-penalty competitors on simulated data. We establish the posterior contraction rate for our model, buttressing our method’s excellent empirical performance with strong theoretical guarantees. Using our method, we estimated the direct effects of diet and residence type on the composition of the gut microbiome of elderly adults.

Citation

Download Citation

Yunyi Shen. Claudia Solís-Lemus. Sameer K. Deshpande. "Estimating Sparse Direct Effects in Multivariate Regression With the Spike-and-Slab LASSO." Bayesian Anal. Advance Publication 1 - 25, 2024. https://doi.org/10.1214/24-BA1430

Information

Published: 2024
First available in Project Euclid: 24 April 2024

Digital Object Identifier: 10.1214/24-BA1430

Subjects:
Primary: 62F15
Secondary: 62F12

Keywords: covariance selection , EM algorithm , penalized likelihood , posterior concentration , Variable selection

Rights: © 2024 International Society for Bayesian Analysis

Advance Publication
Back to Top