Bayesian Analysis for Over-parameterized Linear Model without Sparsity

05/25/2023
by   Tomoya Wakayama, et al.
0

In high-dimensional Bayesian statistics, several methods have been developed, including many prior distributions that lead to the sparsity of estimated parameters. However, such priors have limitations in handling the spectral eigenvector structure of data, and as a result, they are ill-suited for analyzing over-parameterized models (high-dimensional linear models that do not assume sparsity) that have been developed in recent years. This paper introduces a Bayesian approach that uses a prior dependent on the eigenvectors of data covariance matrices, but does not induce the sparsity of parameters. We also provide contraction rates of derived posterior distributions and develop a truncated Gaussian approximation of the posterior distribution. The former demonstrates the efficiency of posterior estimation, while the latter enables quantification of parameter uncertainty using a Bernstein-von Mises-type approach. These results indicate that any Bayesian method that can handle the spectrum of data and estimate non-sparse high dimensions would be possible.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
01/12/2021

Bayesian inference in high-dimensional models

Models with dimension more than the available sample size are now common...
research
02/11/2022

High-dimensional properties for empirical priors in linear regression with unknown error variance

We study full Bayesian procedures for high-dimensional linear regression...
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
11/22/2019

Non-parametric targeted Bayesian estimation of class proportions in unlabeled data

We introduce a novel Bayesian estimator for the class proportion in an u...
research
07/10/2012

Dual-Space Analysis of the Sparse Linear Model

Sparse linear (or generalized linear) models combine a standard likeliho...
research
09/12/2018

Bayesian sparse reconstruction: a brute-force approach to astronomical imaging and machine learning

We present a principled Bayesian framework for signal reconstruction, in...
research
03/01/2012

Sparsity-Promoting Bayesian Dynamic Linear Models

Sparsity-promoting priors have become increasingly popular over recent y...

Please sign up or login with your details

Forgot password? Click here to reset