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Improving multilevel Monte Carlo for stochastic differential equations with application to the Langevin equation

机译:改进随机微分方程的多级蒙特卡洛方法及其在Langevin方程中的应用。

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摘要

This paper applies several well-known tricks from the numerical treatment of deterministic differential equations to improve the efficiency of the multilevel Monte Carlo (MLMC) method for stochastic differential equations (SDEs) and especially the Langevin equation. We use modified equations analysis as an alternative to strong-approximation theory for the integrator, and we apply this to introduce MLMC for Langevin-type equations with integrators based on operator splitting. We combine this with extrapolation and investigate the use of discrete random variables in place of the Gaussian increments, which is a well-known technique for the weak approximation of SDEs. We show that, for small-noise problems, discrete random variables can lead to an increase in efficiency of almost two orders of magnitude for practical levels of accuracy.
机译:本文从确定性微分方程的数值处理中运用了一些众所周知的技巧,以提高多层蒙特卡洛(MLMC)方法对随机微分方程(SDE)尤其是Langevin方程的效率。我们使用修正的方程分析作为积分器的强逼近理论的替代方法,并将其应用到基于算子拆分的带积分器的Langevin型方程的MLMC中。我们将其与外推相结合,并研究使用离散随机变量代替高斯增量,这是SDE的弱近似的众所周知的技术。我们表明,对于小噪声问题,离散的随机变量可以导致效率的提高,达到实用水平的准确度将近两个数量级。

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