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A MULTI-INDEX MARKOV CHAIN MONTE CARLO METHOD

机译:多指标马尔可夫链蒙特卡罗方法

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In this paper, we consider computing expectations with respect to probability laws associated with a certain class of stochastic systems. In order to achieve such a task, one must not only resort to numerical approximation of the expectation but also to a biased discretization of the associated probability. We are concerned with the situation for which the discretization is required in multiple dimensions, for instance in space-time. In such contexts, it is known that the multi-index Monte Carlo (MIMC) method of Haji-Ali, Nobile, and Tempone, (Numer. Math., 132, pp. 767806, 2016) can improve on independent identically distributed (i.i.d.) sampling from the most accurate approximation of the probability law. Through a nontrivial modification of the multilevel Monte Carlo (MLMC) method, this method can reduce the work to obtain a given level of error, relative to i.i.d. sampling and even to MLMC. In this paper, we consider the case when such probability laws are too complex to be sampled independently, for example a Bayesian inverse problem where evaluation of the likelihood requires solution of a partial differential equation model, which needs to be approximated at finite resolution. We develop a modification of the MIMC method, which allows one to use standard Markov chain Monte Carlo (MCMC) algorithms to replace independent and coupled sampling, in certain contexts. We prove a variance theorem for a simplified estimator that shows that using our MIMCMC method is preferable, in the sense above, to i.i.d. sampling from the most accurate approximation, under appropriate assumptions. The method is numerically illustrated on a Bayesian inverse problem associated to a stochastic partial differential equation, where the path measure is conditioned on some observations.
机译:在本文中,我们考虑针对与某类随机系统相关的概率定律计算期望值。为了实现这一任务,不仅必须诉诸于期望的数值近似,而且还必须诉诸于相关概率的有偏离散化。我们关注在多个方面(例如,时空)要求离散化的情况。在这种情况下,众所周知,Haji-Ali,Nobile和Tempone的多指标蒙特卡罗(MIMC)方法(Numer。Math。,132,pp。767806,2016)可以改善独立均布的分布(iid )从概率法则的最精确近似中采样。通过对多层蒙特卡洛(MLMC)方法进行不平凡的修改,相对于i.i.d,此方法可以减少获得给定误差水平的工作。采样,甚至到MLMC。在本文中,我们考虑了这种概率定律过于复杂而无法独立采样的情况,例如贝叶斯逆问题,其中似然性的评估需要求解偏微分方程模型的问题,该问题需要在有限分辨率下进行近似。我们开发了MIMC方法的一种修改,该方法允许在某些情况下使用标准的马尔可夫链蒙特卡洛(MCMC)算法来替换独立和耦合的采样。我们证明了一个简化估计量的方差定理,该定理表明在上述意义上,使用MIMCMC方法优于i.d.在适当的假设下,以最准确的近似值进行抽样。在与随机偏微分方程相关联的贝叶斯逆问题上用数字方式说明了该方法,其中路径测度以某些观察为条件。

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