| Literature DB >> 33867594 |
Jia Wang1, Xizhen Cai2, Runze Li1.
Abstract
Most existing methods of variable selection in partially linear models (PLM) with ultrahigh dimensional covariates are based on partial residuals, which involve a two-step estimation procedure. While the estimation error produced in the first step may have an impact on the second step, multicollinearity among predictors adds additional challenges in the model selection procedure. In this paper, we propose a new Bayesian variable selection approach for PLM. This new proposal addresses those two issues simultaneously as (1) it is a one-step method which selects variables in PLM, even when the dimension of covariates increases at an exponential rate with the sample size, and (2) the method retains model selection consistency, and outperforms existing ones in the setting of highly correlated predictors. Distinguished from existing ones, our proposed procedure employs the difference-based method to reduce the impact from the estimation of the nonparametric component, and incorporates Bayesian subset modeling with diffusing prior (BSM-DP) to shrink the corresponding estimator in the linear component. The estimation is implemented by Gibbs sampling, and we prove that the posterior probability of the true model being selected converges to one asymptotically. Simulation studies support the theory and the efficiency of our methods as compared to other existing ones, followed by an application in a study of supermarket data.Entities:
Keywords: Bayesian variable selection; Difference-based method; Secondary 62J05; Selection consistency; Semiparametric modeling 2010 MSC: Primary 62G08
Year: 2021 PMID: 33867594 PMCID: PMC8046162 DOI: 10.1016/j.jmva.2021.104733
Source DB: PubMed Journal: J Multivar Anal ISSN: 0047-259X Impact factor: 1.473