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Higher order Quasi-Monte Carlo integration for Bayesian PDE Inversion

机译:贝叶斯PDE反演的高阶拟蒙特卡罗积分

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We analyze combined Quasi-Monte Carlo quadrature and Finite Element approximations in Bayesian estimation of solutions to countably-parametric operator equations with holomorphic dependence on the parameters as considered in Schillings and Schwab (2014). Such problems arise in numerical uncertainty quantification and in Bayesian inversion of operator equations with distributed uncertain inputs, such as uncertain coefficients, uncertain domains or uncertain source terms and boundary data. We show that the parametric Bayesian posterior densities belong to a class of weighted Bochner spaces of functions of countably many variables, with a particular structure of the QMC quadrature weights: up to a (problem-dependent, and possibly large) finite dimension S product weights can be used, and beyond this dimension, weighted spaces with so-called SPOD weights, recently introduced in Dick et al. (2014), are used to describe the solution regularity. We establish error bounds for higher order Quasi-Monte Carlo quadrature for the Bayesian estimation based on Dick et al. (2016). It implies, in particular, regularity of the parametric solution and of the countably-parametric Bayesian posterior density in SPOD ("Smoothness driven, Product and Order Dependent") weighted spaces of integrand functions. This, in turn, implies that the Quasi-Monte Carlo quadrature methods in Dick et al. (2014) are applicable to these problem classes, with dimension-independent convergence rates O(N-1/p) of N-point HoQMC approximated Bayesian estimates, where 0 p 1 depends only on the sparsity class of the uncertain input in the Bayesian estimation. Fast component-by-component (CBC for short) construction Gantner and Schwab (2016) allow efficient deterministic Bayesian estimation with up to 10(4) parameters. (C) 2018 Elsevier Ltd. All rights reserved.
机译:我们分析了可数参数算子方程组的解的贝叶斯估计中组合的准蒙特卡罗正交和有限元逼近,并根据Schillings和Schwab(2014)的考虑对参数进行了全纯依赖。此类问题出现在数值不确定性量化和具有不确定输入(例如不确定系数,不确定域或不确定源项和边界数据)的算子方程的贝叶斯反演中。我们表明,参数贝叶斯后验密度属于一类加权Bochner函数空间,具有许多变量,具有QMC正交权重的特定结构:高达(与问题有关,并且可能很大)有限维S乘积权重Dick等人最近引入了具有所谓SPOD权重的加权空间。 (2014年),用于描述解决方案的规律性。我们基于Dick等人为贝叶斯估计建立了高阶拟蒙特卡罗正交误差边界。 (2016)。特别是,它暗示了积分函数的SPOD(“平滑度驱动,乘积和顺序相关”)加权空间中参数解和可数参数贝叶斯后验密度的规律性。反过来,这意味着Dick等人的准蒙特卡罗正交方法。 (2014年)适用于这些问题类别,其中N点HoQMC的维数收敛速度O(N-1 / p)近似于贝叶斯估计,其中0 <1仅取决于不确定输入中的稀疏性类别。贝叶斯估计。快速的逐组件构造(简称CBC)Gantner和Schwab(2016)允许使用多达10(4)个参数的高效确定性贝叶斯估计。 (C)2018 Elsevier Ltd.保留所有权利。

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