Variable Selection with Rigorous Uncertainty Quantification using Deep Bayesian Neural Networks: Posterior Concentration and Bernstein-von Mises Phenomenon

12/03/2019
by   Jeremiah Zhe Liu, et al.
0

This work develops rigorous theoretical basis for the fact that deep Bayesian neural network (BNN) is an effective tool for high-dimensional variable selection with rigorous uncertainty quantification. We develop new Bayesian non-parametric theorems to show that a properly configured deep BNN (1) learns the variable importance effectively in high dimensions, and its learning rate can sometimes "break" the curse of dimensionality. (2) BNN's uncertainty quantification for variable importance is rigorous, in the sense that its 95 credible intervals for variable importance indeed covers the truth 95 time (i.e., the Bernstein-von Mises (BvM) phenomenon). The theoretical results suggest a simple variable selection algorithm based on the BNN's credible intervals. Extensive simulation confirms the theoretical findings and shows that the proposed algorithm outperforms existing classic and neural-network-based variable selection methods, particularly in high dimensions.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/15/2022

Towards a Unified Framework for Uncertainty-aware Nonlinear Variable Selection with Theoretical Guarantees

We develop a simple and unified framework for nonlinear variable selecti...
research
09/19/2021

Uncertainty quantification for robust variable selection and multiple testing

We study the problem of identifying the set of active variables, termed ...
research
07/11/2021

Rank-based Bayesian variable selection for genome-wide transcriptomic analyses

Variable selection is crucial in high-dimensional omics-based analyses, ...
research
02/26/2020

Uncertainty Quantification for Sparse Deep Learning

Deep learning methods continue to have a decided impact on machine learn...
research
04/20/2021

Bayesian subset selection and variable importance for interpretable prediction and classification

Subset selection is a valuable tool for interpretable learning, scientif...
research
01/06/2020

An Automatic Relevance Determination Prior Bayesian Neural Network for Controlled Variable Selection

We present an Automatic Relevance Determination prior Bayesian Neural Ne...
research
05/23/2023

Leveraging Uncertainty Quantification for Picking Robust First Break Times

In seismic exploration, the selection of first break times is a crucial ...

Please sign up or login with your details

Forgot password? Click here to reset