Probabilistic variants of Model Order Reduction (MOR) methods have recently emerged for improving stability and computational performance of classical approaches. In this paper, we propose a probabilistic Reduced Basis Method (RBM) for the approximation of a family of parameter-dependent functions. It relies on a probabilistic greedy algorithm with an error indicator that can be written as an expectation of some parameter-dependent random variable. Practical algorithms relying on Monte Carlo estimates of this error indicator are discussed. In particular, when using Probably Approximately Correct (PAC) bandit algorithm, the resulting procedure is proven to be a weak greedy algorithm with high probability. Intended applications concern the approximation of a parameter-dependent family of functions for which we only have access to (noisy) pointwise evaluations. As a particular application, we consider the approximation of solution manifolds of linear parameter-dependent partial differential equations with a probabilistic interpretation through the Feynman-Kac formula.
翻译:近年来,概率化的模型减小法(MOR)已经出现,并改善了经典方法的稳定性和计算性能。本文提出了一种概率化简约基方法(RBM),用于逼近一族参数相关函数。该方法依赖于一个概率贪心算法和一个误差指示器,该误差指示器可以写成某个参数相关随机变量的期望。文章讨论了基于蒙特卡罗估计该误差指示器的实际算法。特别地,当使用概率约等于正确(PAC)的贪心算法时,所得到的程序被证明是具有高概率弱贪心算法。拟定的应用涉及逼近一族仅能通过(噪声)点内评价访问的参数相关函数。作为一种特殊应用,我们考虑使用费曼-卡克公式的概率解释来逼近线性参数相关偏微分方程的解流形。