Multimodal, high-dimensional, model-based, Bayesian inverse problems with applications in biomechanics
Isabell M. Franck, P.S. Koutsourelakis

TL;DR
This paper develops adaptive Bayesian inference methods for high-dimensional, multimodal inverse problems with expensive likelihood evaluations, validated in biomechanics applications like nonlinear elastography.
Contribution
It introduces mixture density-based adaptive inference strategies and extends dimensionality reduction techniques for complex, high-dimensional inverse problems.
Findings
Effective in capturing multimodal posteriors
Importance sampling confirms small bias
Successful application in nonlinear elastography
Abstract
This paper is concerned with the numerical solution of model-based, Bayesian inverse problems. We are particularly interested in cases where the cost of each likelihood evaluation (forward-model call) is expensive and the number of un- known (latent) variables is high. This is the setting in many problems in com- putational physics where forward models with nonlinear PDEs are used and the parameters to be calibrated involve spatio-temporarily varying coefficients, which upon discretization give rise to a high-dimensional vector of unknowns. One of the consequences of the well-documented ill-posedness of inverse prob- lems is the possibility of multiple solutions. While such information is contained in the posterior density in Bayesian formulations, the discovery of a single mode, let alone multiple, is a formidable task. The goal of the present paper is two- fold. On one hand, we…
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Taxonomy
TopicsProbabilistic and Robust Engineering Design · Gaussian Processes and Bayesian Inference · Advanced Multi-Objective Optimization Algorithms
