Hierarchical Bayesian Inverse Problems: A High-Dimensional Statistics Viewpoint
Statistics Theory
2024-01-09 v1 Numerical Analysis
Numerical Analysis
Statistics Theory
Abstract
This paper analyzes hierarchical Bayesian inverse problems using techniques from high-dimensional statistics. Our analysis leverages a property of hierarchical Bayesian regularizers that we call approximate decomposability to obtain non-asymptotic bounds on the reconstruction error attained by maximum a posteriori estimators. The new theory explains how hierarchical Bayesian models that exploit sparsity, group sparsity, and sparse representations of the unknown parameter can achieve accurate reconstructions in high-dimensional settings.
Cite
@article{arxiv.2401.03074,
title = {Hierarchical Bayesian Inverse Problems: A High-Dimensional Statistics Viewpoint},
author = {Daniel Sanz-Alonso and Nathan Waniorek},
journal= {arXiv preprint arXiv:2401.03074},
year = {2024}
}