A Comparison of Vectorizable Discrete Sampling Methods in Monte Carlo Applications

R. Sarno, V. Bhavsar, E. Hussein
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Abstract

The performance of various vectorizable discrete random-sampling methods, along with the commonly used inverse sampling method, is assessed on a vector machine. Monte Carlo applications involving, one-dimensional, two-dimensional and multi-dimensional probability tables are used in the investigation. Various forms of the weighted sampling method and methods that transform the original probability table are examined. It is found that some form of weighted sampling is efficient, when the original probability distribution is not far from uniform or can be approximated analytically. Table transformation methods, though requiring additional memory storage, are best suited in applications where multidimensional tables are involved.
可向离散采样方法在蒙特卡罗中的应用比较
在向量机上对各种可向离散随机抽样方法以及常用的逆抽样方法的性能进行了评价。蒙特卡罗应用涉及一维、二维和多维概率表的研究。对各种形式的加权抽样方法和对原始概率表进行变换的方法进行了研究。我们发现,当原始概率分布离均匀不远或可以解析近似时,某种形式的加权抽样是有效的。表转换方法虽然需要额外的内存存储,但最适合涉及多维表的应用程序。
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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