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首页> 外文期刊>The Annals of applied probability: an official journal of the Institute of Mathematical Statistics >Optimal pointwise approximation of SDEs based on Brownian motion at discrete points
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Optimal pointwise approximation of SDEs based on Brownian motion at discrete points

机译:基于离散点布朗运动的SDE最优逐点逼近

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摘要

We study pathwise approximation of scalar stochastic differential equations at a single point. We provide the exact rate of convergence of the minimal errors that can be achieved by arbitrary numerical methods that are based (in a measurable way) on a finite number of sequential observations of the driving Brownian motion. The resulting lower error bounds hold in particular for all methods that are implementable on a computer and use a random number generator to simulate the driving Brownian motion at finitely many points. Our analysis shows that approximation at a single point is strongly connected to an integration problem for the driving Brownian motion with a random weight. Exploiting general ideas from estimation of weighted integrals of stochastic processes, we introduce an adaptive scheme, which is easy to implement and performs asymptotically optimally.
机译:我们研究单点标量随机微分方程的路径近似。我们提供了最小误差的精确收敛速度,该误差可以通过基于有限数量的驱动布朗运动的连续观测(以可测量的方式)的任意数值方法来实现。所产生的较低的误差范围尤其适用于在计算机上可实施的所有方法,并使用随机数生成器在有限的多个点上模拟布朗运动。我们的分析表明,单点逼近与驱动随机权重的布朗运动的积分问题密切相关。从随机过程的加权积分估计中利用一般思想,我们引入了一种自适应方案,该方案易于实现,并且渐近地表现最佳。

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