Appropriate reduction of the posterior distribution in fully Bayesian inversions

05/16/2022
by   Dye SK Sato, et al.
0

Bayesian inversion generates a posterior distribution of model parameters from an observation equation and prior information both weighted by hyperparameters. The prior is also introduced for the hyperparameters in fully Bayesian inversions and enables us to evaluate both the model parameters and hyperparameters probabilistically by the joint posterior. However, even in a linear inverse problem, it is unsolved how we should extract useful information on the model parameters from the joint posterior. This study presents a theoretical exploration into the appropriate dimensionality reduction of the joint posterior in the fully Bayesian inversion. We classify the ways of probability reduction into the following three categories focused on the marginalisation of the joint posterior: (1) using the joint posterior without marginalisation, (2) using the marginal posterior of the model parameters and (3) using the marginal posterior of the hyperparameters. First, we derive several analytical results that characterise these categories. One is a suite of semianalytic representations of the probability maximisation estimators for respective categories in the linear inverse problem. The mode estimators of categories (1) and (2) are found asymptotically identical for a large number of data and model parameters. We also prove the asymptotic distributions of categories (2) and (3) delta-functionally concentrate on their probability peaks, which predicts two distinct optimal estimates of the model parameters. Second, we conduct a synthetic test and find an appropriate reduction is realised by category (3), typified by Akaike's Bayesian information criterion (ABIC). The other reduction categories are shown inappropriate for the case of many model parameters, where the probability concentration of the marginal posterior of the model parameters is found no longer to mean the central limit theorem...

READ FULL TEXT

page 8

page 9

page 10

page 16

page 17

page 18

page 31

page 37

research
04/19/2021

Uncertainty Quantification in Friction Model for Earthquakes using Bayesian inference

This work presents a framework to inversely quantify uncertainty in the ...
research
07/26/2023

Identifiability and Falsifiability: Two Challenges for Bayesian Model Expansion

We study the identifiability of model parameters and falsifiability of m...
research
02/15/2020

Optimization-Based MCMC Methods for Nonlinear Hierarchical Statistical Inverse Problems

In many hierarchical inverse problems, not only do we want to estimate h...
research
12/05/2018

Bayesian Spatial Inversion and Conjugate Selection Gaussian Prior Models

We introduce the concept of conjugate prior models for a given likelihoo...
research
08/10/2023

Inconsistency and Acausality of Model Selection in Bayesian Inverse Problems

Bayesian inference paradigms are regarded as powerful tools for solution...
research
05/24/2023

Generative AI for Bayesian Computation

Generative AI (Gen-AI) methods are developed for Bayesian Computation. G...
research
06/03/2019

Bayesian Prior Networks with PAC Training

We propose to train Bayesian Neural Networks (BNNs) by empirical Bayes a...

Please sign up or login with your details

Forgot password? Click here to reset