Abstract

AbstractIn this article, we review a few fast algorithms for solving large-scale stochastic inverse problems using Bayesian methods. After a brief introduction to the Bayesian stochastic inverse methodology, we review the following computational techniques, to solve large scale problems: the fast Fourier transform, the fast multipole method (classical and a black-box version), and finallym the hierarchical matrix approach. We emphasize that this is mainly a survey paper presenting a few fast algorithms applicable to large-scale Bayesian inversion techniques, applicable to applications arising from geostatistics. The article is presented at a level accessible to graduate students and computational engineers. Hence, we mainly present the algorithmic ideas and theoretical results.KeywordsBayesian stochastic inverse modelingLarge-scale problemsGeostatistical estimationNumerical linear algebraFast Fourier transformAst multipole methodHierarchical matricesAMS(MOS) Subject ClassificationsPrimary 123456789101112

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