On the proof of posterior contraction for sparse generalized linear models with multivariate responses

01/30/2022
by   Shao-Hsuan Wang, et al.
0

In recent years, the literature on Bayesian high-dimensional variable selection has rapidly grown. It is increasingly important to understand whether these Bayesian methods can consistently estimate the model parameters. To this end, shrinkage priors are useful for identifying relevant signals in high-dimensional data. For multivariate linear regression models with Gaussian response variables, Bai and Ghosh (2018) proposed a multivariate Bayesian model with shrinkage priors (MBSP) for estimation and variable selection in high-dimensional settings. However, the proofs of posterior consistency for the MBSP method (Theorems 3 and 4 of Bai and Ghosh (2018) were incorrect. In this paper, we provide a corrected proof of Theorems 3 and 4 of Bai and Ghosh (2018). We leverage these new proofs to extend the MBSP model to multivariate generalized linear models (GLMs). Under our proposed model (MBSP-GLM), multiple responses belonging to the exponential family are simultaneously modeled and mixed-type responses are allowed. We show that the MBSP-GLM model achieves strong posterior consistency when p grows at a subexponential rate with n. Furthermore, we quantify the posterior contraction rate at which the posterior shrinks around the true regression coefficients and allow the dimension of the responses q to grow as n grows. Thus, we strengthen the previous results on posterior consistency, which did not provide rate results. This greatly expands the scope of the MBSP model to include response variables of many data types, including binary and count data. To the best of our knowledge, this is the first posterior contraction result for multivariate Bayesian GLMs.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
11/21/2017

High-Dimensional Multivariate Posterior Consistency Under Global-Local Shrinkage Priors

We consider sparse Bayesian estimation in the classical multivariate lin...
research
04/09/2019

Ultra High-dimensional Multivariate Posterior Contraction Rate Under Shrinkage Priors

In recent years, shrinkage priors have received much attention in high-d...
research
07/14/2020

A Unified Computational and Theoretical Framework for High-Dimensional Bayesian Additive Models

We introduce a general framework for estimation and variable selection i...
research
03/15/2021

Adaptive posterior convergence in sparse high dimensional clipped generalized linear models

We develop a framework to study posterior contraction rates in sparse hi...
research
06/11/2019

The EAS approach for graphical selection consistency in vector autoregression models

As evidenced by various recent and significant papers within the frequen...
research
10/10/2022

Bayesian Sparse Regression for Mixed Multi-Responses with Application to Runtime Metrics Prediction in Fog Manufacturing

Fog manufacturing can greatly enhance traditional manufacturing systems ...
research
11/15/2021

An Approach of Bayesian Variable Selection for Ultrahigh Dimensional Multivariate Regression

In many practices, scientists are particularly interested in detecting w...

Please sign up or login with your details

Forgot password? Click here to reset