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A WEIGHT-BOUNDED IMPORTANCE SAMPLING METHOD FOR VARIANCE REDUCTION

机译:减少方差的重量界重点采样方法

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摘要

Importance sampling (IS) is an important technique to reduce the estimation variance in Monte Carlo simulations. In many practical problems, however, the use of the IS method may result in unbounded variance, and thus fail to provide reliable estimates. To address the issue, we propose a method which can prevent the risk of unbounded variance; the proposed method performs the standard IS for the integral of interest in a region only in which the IS weight is bounded and we use the result as an approximation to the original integral. It can be verified that the resulting estimator has a finite variance. Moreover, we also provide a normality test based method to identify the region with bounded IS weight (termed as the safe region) from the samples drawn from the standard IS distribution. With numerical examples, we demonstrate that the proposed method can yield a rather reliable estimate when the standard IS fails, and it also outperforms the defensive IS, a popular method to prevent unbounded variance.
机译:重要性抽样(IS)是减少蒙特卡罗模拟中估计差异的重要技术。然而,在许多实际问题中,使用IS方法可能导致无界性方差,因此不能提供可靠的估计。要解决问题,我们提出了一种可以防止无界差异风险的方法;所提出的方法执行标准是用于仅在其中界限的区域中的兴趣的积分,并且我们将结果用作原始积分的近似值。可以验证结果估计器具有有限差异。此外,我们还提供了一种基于正常测试的方法,以从标准汲取的样本识别有界限的界限(称为安全区域)。利用数值示例,我们证明所提出的方法可以在标准失败时产生相当可靠的估计,并且它也优于防御性,是防止无界差异的流行方法。

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