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Two-Step Mixed-Type Multivariate Bayesian Sparse Variable Selection with Shrinkage Priors

Statistics Theory 2024-12-20 v8 Statistics Theory

Abstract

We introduce a Bayesian framework for mixed-type multivariate regression using continuous shrinkage priors. Our framework enables joint analysis of mixed continuous and discrete outcomes and facilitates variable selection from the pp covariates. Theoretical studies of Bayesian mixed-type multivariate response models have not been conducted previously and require more intricate arguments than the corresponding theory for univariate response models due to the correlations between the responses. In this paper, we investigate necessary and sufficient conditions for posterior contraction of our method when pp grows faster than sample size nn. The existing literature on Bayesian high-dimensional asymptotics has focused only on cases where pp grows subexponentially with nn. In contrast, we study the asymptotic regime where pp is allowed to grow exponentially in terms of nn. We develop a novel two-step approach for variable selection which possesses the sure screening property and provably achieves posterior contraction even under exponential growth of pp. We demonstrate the utility of our method through simulation studies and applications to real data, including a cancer genomics dataset where n=174n=174 and p=9183p=9183. The R code to implement our method is available at https://github.com/raybai07/MtMBSP.

Keywords

Cite

@article{arxiv.2201.12839,
  title  = {Two-Step Mixed-Type Multivariate Bayesian Sparse Variable Selection with Shrinkage Priors},
  author = {Shao-Hsuan Wang and Ray Bai and Hsin-Hsiung Huang},
  journal= {arXiv preprint arXiv:2201.12839},
  year   = {2024}
}

Comments

60 pages including Appendices, 3 total figures, 6 total tables. Fixed some minor issues