稀有事件模拟的半参数交叉熵

Z. Botev, Ad Ridder, L. Rojas-Nandayapa
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引用次数: 6

摘要

交叉熵法是一种众所周知的用于罕见事件概率估计的自适应重要抽样方法,该方法需要在参数类内估计最优重要抽样密度。在本文中,我们估计一个最优的重要抽样密度在一个更广泛的半参数类分布。我们证明这种半参数版本的交叉熵方法经常产生有效的估计。我们用数值实验说明了该方法的优异实用性能,并表明对于我们所考虑的问题,它通常优于其他方案的数量级。
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Semiparametric Cross Entropy for Rare-Event Simulation
The Cross Entropy method is a well-known adaptive importance sampling method for rare-event probability estimation, which requires estimating an optimal importance sampling density within a parametric class. In this article we estimate an optimal importance sampling density within a wider semiparametric class of distributions. We show that this semiparametric version of the Cross Entropy method frequently yields efficient estimators. We illustrate the excellent practical performance of the method with numerical experiments and show that for the problems we consider it typically outperforms alternative schemes by orders of magnitude.
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