Testing-driven Variable Selection in Bayesian Modal Regression
Methodology
2025-10-29 v1 Machine Learning
Computation
Machine Learning
Abstract
We propose a Bayesian variable selection method in the framework of modal regression for heavy-tailed responses. An efficient expectation-maximization algorithm is employed to expedite parameter estimation. A test statistic is constructed to exploit the shape of the model error distribution to effectively separate informative covariates from unimportant ones. Through simulations, we demonstrate and evaluate the efficacy of the proposed method in identifying important covariates in the presence of non-Gaussian model errors. Finally, we apply the proposed method to analyze two datasets arising in genetic and epigenetic studies.
Cite
@article{arxiv.2510.23831,
title = {Testing-driven Variable Selection in Bayesian Modal Regression},
author = {Jiasong Duan and Hongmei Zhang and Xianzheng Huang},
journal= {arXiv preprint arXiv:2510.23831},
year = {2025}
}
Comments
30 pages, 2 figures, preprint under review