Local estimators and Bayesian inverse problems with non-unique solutions

05/19/2021
by   Jiguang Sun, et al.
0

The Bayesian approach is effective for inverse problems. The posterior density distribution provides useful information of the unknowns. However, for problems with non-unique solutions, the classical estimators such as the maximum a posterior (MAP) and conditional mean (CM) are not enough. We introduce two new estimators, the local maximum a posterior (LMAP) and local conditional mean (LCM). Their applications are demonstrated by three inverse problems: an inverse spectral problem, an inverse source problem, and an inverse medium problem.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/26/2023

Strong maximum a posteriori estimation in Banach spaces with Gaussian priors

This article shows that a large class of posterior measures that are abs...
research
02/15/2022

The efficacy and generalizability of conditional GANs for posterior inference in physics-based inverse problems

In this work, we train conditional Wasserstein generative adversarial ne...
research
11/30/2022

Proximal Residual Flows for Bayesian Inverse Problems

Normalizing flows are a powerful tool for generative modelling, density ...
research
07/25/2023

Source Condition Double Robust Inference on Functionals of Inverse Problems

We consider estimation of parameters defined as linear functionals of so...
research
03/28/2022

Bayesian inverse problems using homotopy

In solving Bayesian inverse problems, it is often desirable to use a com...
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