Numerical realization of the Bayesian inversion accelerated using surrogate models

Simona Bérešová
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Abstract

The Bayesian inversion is a natural approach to the solution of inverse problems based on uncertain observed data. The result of such an inverse problem is the posterior distribution of unknown parameters. This paper deals with the numerical realization of the Bayesian inversion focusing on problems governed by computationally expensive forward models such as numerical solutions of partial differential equations. Samples from the posterior distribution are generated using the Markov chain Monte Carlo (MCMC) methods accelerated with surrogate models. A surrogate model is understood as an approximation of the forward model which should be computationally much cheaper. The target distribution is not fully replaced by its approximation; therefore, samples from the exact posterior distribution are provided. In addition, non-intrusive surrogate models can be updated during the sampling process resulting in an adaptive MCMC method. The use of the surrogate models significantly reduces the number of evaluations of the forward model needed for a reliable description of the posterior distribution. Described sampling procedures are implemented in the form of a Python package.
利用代理模型加速贝叶斯反演的数值实现
贝叶斯反演是求解基于不确定观测数据的逆问题的一种自然方法。这种反问题的结果是未知参数的后验分布。本文讨论了贝叶斯反演的数值实现,重点研究了偏微分方程数值解等计算代价昂贵的正演模型所控制的问题。从后验分布的样本是使用马尔科夫链蒙特卡罗(MCMC)方法与代理模型加速生成的。代理模型被理解为正向模型的近似值,它在计算上要便宜得多。目标分布没有被它的近似值完全取代;因此,我们提供了精确后验分布的样本。此外,非侵入性代理模型可以在采样过程中更新,从而产生自适应MCMC方法。代理模型的使用显著减少了可靠描述后验分布所需的正演模型的评估次数。所描述的采样过程以Python包的形式实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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