Splitting Algorithms for Rare Events of Semimartingale Reflecting Brownian Motions

Q1 Mathematics
K. Leder, Xin Liu, Zicheng Wang
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引用次数: 0

Abstract

We study rare event simulations of semimartingale reflecting Brownian motions (SRBMs) in an orthant. The rare event of interest is that a d-dimensional positive recurrent SRBM enters the set [Formula: see text] before hitting a small neighborhood of the origin [Formula: see text] as [Formula: see text] with a starting point outside the two sets and of order o(n). We show that, under two regularity conditions (the Dupuis–Williams stability condition of the SRBM and the Lipschitz continuity assumption of the associated Skorokhod problem), the probability of the rare event satisfies a large deviation principle. To study the variational problem (VP) for the rare event in two dimensions, we adapt its exact solution from developed by Avram, Dai, and Hasenbein in 2001. In three and higher dimensions, we construct a novel subsolution to the VP under a further assumption that the reflection matrix of the SRBM is a nonsingular [Formula: see text]-matrix. Based on the solution/subsolution, particle-based simulation algorithms are constructed to estimate the probability of the rare event. Our estimator is asymptotically optimal for the discretized problem in two dimensions and has exponentially superior performance over standard Monte Carlo in three and higher dimensions. In addition, we establish that the growth rate of the relative bias term arising from discretization is subexponential in all dimensions. Therefore, we can estimate the probability of interest with subexponential complexity growth in two dimensions. In three and higher dimensions, the computational complexity of our estimators has a strictly smaller exponential growth rate than the standard Monte Carlo estimators.
反映布朗运动的半鞅稀有事件的分割算法
我们研究了orthant中反映布朗运动的半鞅(SRBM)的罕见事件模拟。令人感兴趣的罕见事件是,d维正递归SRBM在到达原点[公式:见文本]的小邻域之前进入集合[公式:参见文本]为[公式:见文本],起点在两个集合之外,阶为o(n)。我们证明,在两个正则性条件下(SRBM的Dupuis–Williams稳定性条件和相关Skorokhod问题的Lipschitz连续性假设),罕见事件的概率满足大偏差原理。为了研究二维罕见事件的变分问题,我们采用了Avram、Dai和Hasenbein在2001年提出的精确解。在三维及更高维中,我们在SRBM的反射矩阵是非奇异[公式:见正文]矩阵的进一步假设下,构造了VP的一个新的亚解。基于解/亚解,构造了基于粒子的模拟算法来估计罕见事件的概率。我们的估计器对于二维离散化问题是渐近最优的,并且在三维及更高维上具有优于标准蒙特卡罗的指数性能。此外,我们还证明了离散化引起的相对偏差项的增长率在所有维度上都是次指数的。因此,我们可以在两个维度上估计亚指数复杂性增长的兴趣概率。在三维及更高维中,我们估计量的计算复杂度具有比标准蒙特卡罗估计量小得多的指数增长率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Stochastic Systems
Stochastic Systems Decision Sciences-Statistics, Probability and Uncertainty
CiteScore
3.70
自引率
0.00%
发文量
18
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