Variational Bayesian approximation of inverse problems using sparse precision matrices

Povala, J., Kazlauskaite, I., Febrianto, E. , Cirak, F. and Girolami, M. (2022) Variational Bayesian approximation of inverse problems using sparse precision matrices. Computer Methods in Applied Mechanics and Engineering, 393, 114712. (doi: 10.1016/j.cma.2022.114712)

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Abstract

Inverse problems involving partial differential equations (PDEs) are widely used in science and engineering. Although such problems are generally ill-posed, different regularisation approaches have been developed to ameliorate this problem. Among them is the Bayesian formulation, where a prior probability measure is placed on the quantity of interest. The resulting posterior probability measure is usually analytically intractable. The Markov Chain Monte Carlo (MCMC) method has been the go-to method for sampling from those posterior measures. MCMC is computationally infeasible for large-scale problems that arise in engineering practice. Lately, Variational Bayes (VB) has been recognised as a more computationally tractable method for Bayesian inference, approximating a Bayesian posterior distribution with a simpler trial distribution by solving an optimisation problem. In this work, we argue, through an empirical assessment, that VB methods are a flexible and efficient alternative to MCMC for this class of problems. We propose a natural choice of a family of Gaussian trial distributions parametrised by precision matrices, thus taking advantage of the inherent sparsity of the inverse problem encoded in its finite element discretisation. We utilise stochastic optimisation to efficiently estimate the variational objective and assess not only the error in the solution mean but also the ability to quantify the uncertainty of the estimate. We test this on PDEs based on the Poisson equation in 1D and 2D. A Tensorflow implementation is made publicly available on GitHub.

Item Type:Articles
Status:Published
Refereed:Yes
Glasgow Author(s) Enlighten ID:Febrianto, Dr Eky and Girolami, Prof Mark
Authors: Povala, J., Kazlauskaite, I., Febrianto, E., Cirak, F., and Girolami, M.
College/School:College of Science and Engineering > School of Computing Science
College of Science and Engineering > School of Engineering > Infrastructure and Environment
Journal Name:Computer Methods in Applied Mechanics and Engineering
Publisher:Elsevier
ISSN:0045-7825
ISSN (Online):1879-2138
Copyright Holders:Copyright: © 2022 The Authors
First Published:First published in Computer Methods in Applied Mechanics and Engineering 393: 114712
Publisher Policy:Reproduced under a Creative Commons licence

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