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Convergence analysis of multilevel Monte Carlo variance estimators and application for random obstacle problems

机译:多级蒙特卡洛方差估计的收敛性分析及其在随机障碍问题中的应用

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摘要

We develop a novel convergence theory for the multilevel sample variance estimators in the framework of the multilevel Monte Carlo methods. We prove that, dependent on the regularity of the quantity of interest, the multilevel sample variance estimator may achieve the same asymptotic cost/error relation as the multilevel sample mean, which is superior to the standard Monte Carlo method. Weaker regularity assumptions result in reduced convergence rates, quantified in our analysis. The general convergence theory is applied to a class of scalar elliptic obstacle problems with rough random obstacle profiles, which is a simple model of contact between a deformable body with a rough uncertain substrate. Numerical experiments confirm theoretical convergence proofs.
机译:我们在多级蒙特卡洛方法的框架内为多级样本方差估计量开发了一种新颖的收敛理论。我们证明,根据感兴趣量的规律性,多级样本方差估计量可以实现与多级样本均值相同的渐近成本/误差关系,这优于标准的蒙特卡洛方法。较弱的规律性假设导致收敛速度降低,这在我们的分析中进行了量化。将一般收敛理论应用于一类具有粗糙随机障碍物轮廓的标量椭圆形障碍物问题,这是一个可变形体与粗糙的不确定基底之间接触的简单模型。数值实验证实了理论收敛证明。

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