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Dimensionality reduction and polynomial chaos acceleration of Bayesian inference in inverse problems

机译:反问题中贝叶斯推断的降维和多项式混沌加速

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We consider a Bayesian approach to nonlinear inverse problems in which the unknown quantity is a spatial or temporal field, endowed with a hierarchical Gaussian process prior. Computational challenges in this construction arise from the need for repeated evaluations of the forward model (e.g., in the context of Markov chain Monte Carlo) and are compounded by high dimensionality of the posterior. We address these challenges by introducing truncated Karhunen-Loeve expansions, based on the prior distribution, to efficiently parameterize the unknown field and to specify a stochastic forward problem whose solution captures that of the deterministic forward model over the support of the prior. We seek a solution of this problem using Galerkin projection on a polynomial chaos basis, and use the solution to construct a reduced-dimensionality surrogate posterior density that is inexpensive to evaluate. We demonstrate the formulation on a transient diffusion equation with prescribed source terms, inferring the spatially-varying diffusivity of the medium from limited and noisy data. (C) 2008 Elsevier Inc. All rights reserved.
机译:我们考虑一种针对非线性逆问题的贝叶斯方法,其中未知量是空间或时间场,并具有先验的分层高斯过程。这种构造中的计算挑战来自对前向模型进行重复评估的需求(例如,在马尔可夫链蒙特卡洛的情况下),并且后验的高维度使情况更加复杂。我们通过基于先验分布引入截断的Karhunen-Loeve展开来解决这些挑战,以有效地对未知字段进行参数化并指定随机正向问题,该问题的解决方案在先验的支持下捕获了确定性正向模型的问题。我们在多项式混沌的基础上使用Galerkin投影寻求该问题的解决方案,并使用该解决方案来构建可降低评估成本的降维替代后验密度。我们用规定的源项论证了基于瞬态扩散方程的公式,从有限且嘈杂的数据推断出介质在空间上的变化率。 (C)2008 Elsevier Inc.保留所有权利。

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