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首页> 外文期刊>Inverse problems and imaging >FEM-BASED DISCRETIZATION-INVARIANT MCMC METHODS FOR PDE-CONSTRAINED BAYESIAN INVERSE PROBLEMS
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FEM-BASED DISCRETIZATION-INVARIANT MCMC METHODS FOR PDE-CONSTRAINED BAYESIAN INVERSE PROBLEMS

机译:PDE约束贝叶斯逆问题的基于有限元的离散不变MCMC方法

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We present a systematic construction of FEM-based dimension independent (discretization-invariant) Markov chain Monte Carlo (MCMC) approaches to explore PDE-constrained Bayesian inverse problems in infinite dimensional parameter spaces. In particular, we consider two frameworks to achieve this goal: Metropolize-then-discretize and discretize-then-Metropolize. The former refers to the method of discretizing function-space MCMC methods. The latter, on the other hand, first discretizes the Bayesian inverse problem and then proposes MCMC methods for the resulting discretized posterior probability density. In general, these two frameworks do not commute, that is, the resulting finite dimensional MCMC algorithms are not identical. The discretization step of the former may not be trivial since it involves both numerical analysis and probability theory, while the latter, perhaps "easier", may not be discretization-invariant using traditional approaches. This paper constructively develops finite element (FEM) discretization schemes for both frameworks and shows that both commutativity and discretization-invariance are attained. In particular, it shows how to construct discretizethen-Metropolize approaches for both Metropolis-adjusted Langevin algorithm and the hybrid Monte Carlo method that commute with their Metropolize-then-discretize counterparts. The key that enables this achievement is a proper FEM discretization of the prior, the likelihood, and the Bayes' formula, together with a correct definition of quantities such as the gradient and the covariance matrix in discretized finite dimensional parameter spaces. The implication is that practitioners can take advantage of the developments in this paper to straightforwardly construct discretization-invariant discretize-then-Metropolize MCMC for large-scale inverse problems. Numerical results for one-and two-dimensional elliptic inverse problems with up to 17899 parameters are presented to support the proposed developments.
机译:我们提出了一种基于FEM的维独立(离散不变)马尔可夫链蒙特卡洛(MCMC)方法的系统构建,以探索无穷维参数空间中PDE约束的贝叶斯逆问题。特别是,我们考虑了两个框架来实现此目标:将其离散化然后离散化,然后将其离散化。前者指的是离散化函数空间MCMC方法的方法。另一方面,后者首先离散化贝叶斯逆问题,然后针对所得离散化后验概率密度提出MCMC方法。通常,这两个框架不会互换,也就是说,所得的有限维MCMC算法并不相同。前者的离散化步骤可能并不容易,因为它涉及数值分析和概率论,而后者,也许“更容易”,使用传统方法可能不会离散化。本文针对这两种框架建设性地开发了有限元(FEM)离散化方案,并证明了可交换性和离散化不变性均得到了实现。特别是,它显示了如何为都市调整后的Langevin算法和与都市简化然后离散化的对等混合的混合蒙特卡罗方法构造离散化-都市化方法。实现此目标的关键是先验,似然和贝叶斯公式的正确FEM离散化,以及离散化有限维参数空间中诸如梯度和协方差矩阵之类的数量的正确定义。这就意味着从业者可以利用本文的发展来直接构造针对大规模逆问题的离散化不变式离散化然后都市化MCMC。提出了一维和二维椭圆逆问题的数值结果,参数高达17899,以支持提出的发展。

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