The Multilevel Monte Carlo (MLMC) approach usually works well when estimating the expected value of a quantity which is a Lipschitz function of intermediate quantities, but if it is a discontinuous function it can lead to a much slower decay in the variance of the MLMC correction. This article reviews the literature on techniques which can be used to overcome this challenge in a variety of different contexts, and discusses recent developments using either a branching diffusion or adaptive sampling.
翻译:多层次蒙特卡洛(MLMC)方法通常在估计一个量的预期值时效果良好,该量是中间量的Lipschitz函数,但如果它是一个不连续函数,它可能导致MLMC校正差异减慢得多。本文章回顾了关于各种情况下可用于克服这一挑战的技术的文献,并讨论了利用分支扩散或适应性抽样的最新发展情况。