On the Locally Lipschitz Robustness of Bayesian Inverse Problems

06/17/2019
by   Björn Sprungk, et al.
0

In this note we consider the robustness of posterior measures occuring in Bayesian inference w.r.t. perturbations of the prior measure and the log-likelihood function. This extends the well-posedness analysis of Bayesian inverse problems. In particular, we prove a general local Lipschitz continuous dependence of the posterior on the prior and the log-likelihood w.r.t. various common distances of probability measures. These include the Hellinger and Wasserstein distance and the Kullback-Leibler divergence. We only assume the boundedness of the likelihoods and measure their perturbations in an L^p-norm w.r.t. the prior. Our results indicate an increasing sensitivity of Bayesian inference as the posterior becomes more concentrated, e.g., due to more or more accurate data. This confirms and extends previous observations made in the sensitivity analysis of Bayesian inference.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/02/2023

Bayesian Posterior Perturbation Analysis with Integral Probability Metrics

In recent years, Bayesian inference in large-scale inverse problems foun...
research
03/28/2023

Conditional Generative Models are Provably Robust: Pointwise Guarantees for Bayesian Inverse Problems

Conditional generative models became a very powerful tool to sample from...
research
10/15/2018

Evaluating Sensitivity to the Stick Breaking Prior in Bayesian Nonparametrics

A central question in many probabilistic clustering problems is how many...
research
07/29/2021

Detecting and diagnosing prior and likelihood sensitivity with power-scaling

Determining the sensitivity of the posterior to perturbations of the pri...
research
11/23/2022

Efficient sampling of non log-concave posterior distributions with mixture of noises

This paper focuses on a challenging class of inverse problems that is of...
research
11/13/2019

Error bounds for some approximate posterior measures in Bayesian inference

In certain applications involving the solution of a Bayesian inverse pro...
research
01/12/2023

Choosing observation operators to mitigate model error in Bayesian inverse problems

In Bayesian inverse problems, 'model error' refers to the discrepancy be...

Please sign up or login with your details

Forgot password? Click here to reset