Iterative Updating of Model Error for Bayesian Inversion
Daniela Calvetti, Matthew M. Dunlop, Erkki Somersalo, Andrew M. Stuart

TL;DR
This paper presents an iterative Bayesian method to update the distribution of model error in inverse problems, improving the accuracy of posterior estimates with limited model evaluations.
Contribution
The paper introduces a novel iterative algorithm for updating model error distribution in Bayesian inversion, with proven convergence and improved point estimates.
Findings
Algorithm converges geometrically in linear Gaussian case.
Particle approximation converges in large particle limit.
Iterative method yields superior point estimates compared to ignoring model error.
Abstract
In computational inverse problems, it is common that a detailed and accurate forward model is approximated by a computationally less challenging substitute. The model reduction may be necessary to meet constraints in computing time when optimization algorithms are used to find a single estimate, or to speed up Markov chain Monte Carlo (MCMC) calculations in the Bayesian framework. The use of an approximate model introduces a discrepancy, or modeling error, that may have a detrimental effect on the solution of the ill-posed inverse problem, or it may severely distort the estimate of the posterior distribution. In the Bayesian paradigm, the modeling error can be considered as a random variable, and by using an estimate of the probability distribution of the unknown, one may estimate the probability distribution of the modeling error and incorporate it into the inversion. We introduce an…
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