Randomized maximum likelihood based posterior sampling
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Published:2021-12-20
Issue:1
Volume:26
Page:217-239
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ISSN:1420-0597
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Container-title:Computational Geosciences
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language:en
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Short-container-title:Comput Geosci
Author:
Ba Yuming, de Wiljes Jana, Oliver Dean S.ORCID, Reich Sebastian
Abstract
AbstractMinimization of a stochastic cost function is commonly used for approximate sampling in high-dimensional Bayesian inverse problems with Gaussian prior distributions and multimodal posterior distributions. The density of the samples generated by minimization is not the desired target density, unless the observation operator is linear, but the distribution of samples is useful as a proposal density for importance sampling or for Markov chain Monte Carlo methods. In this paper, we focus on applications to sampling from multimodal posterior distributions in high dimensions. We first show that sampling from multimodal distributions is improved by computing all critical points instead of only minimizers of the objective function. For applications to high-dimensional geoscience inverse problems, we demonstrate an efficient approximate weighting that uses a low-rank Gauss-Newton approximation of the determinant of the Jacobian. The method is applied to two toy problems with known posterior distributions and a Darcy flow problem with multiple modes in the posterior.
Funder
Deutsche Forschungsgemeinschaft The Research Council of Norway China Scholarship Council NORCE Norwegian Research Centre AS
Publisher
Springer Science and Business Media LLC
Subject
Computational Mathematics,Computational Theory and Mathematics,Computers in Earth Sciences,Computer Science Applications
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