蒙特卡罗泊松过程模型

Chris J. Maddison
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引用次数: 15

摘要

从任意概率分布中模拟样本是统计计算的一个重要研究项目。最近的工作显示了一个古老的想法的希望,即从离散分布中采样可以通过扰动和最大化其质量函数来完成。然而,还没有清楚地解释这个研究项目是如何与蒙特卡洛文献中更传统的观点联系起来的。本章通过确定一个泊松过程模型来解决这个问题,该模型统一了蒙特卡罗模拟的摄动和接受-拒绝观点。许多现有的方法都可以在这个框架中进行分析。本章回顾了泊松过程,并为蒙特卡罗方法定义了泊松过程模型。该模型通过构造Gumbel过程将摄动技巧推广到无限空间,该随机函数的最大值位于无限空间上的样本处。该模型还用于分析A*抽样和OS*两种不同的蒙特卡罗族方法。
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A Poisson process model for Monte Carlo
Simulating samples from arbitrary probability distributions is a major research program of statistical computing. Recent work has shown promise in an old idea, that sampling from a discrete distribution can be accomplished by perturbing and maximizing its mass function. Yet, it has not been clearly explained how this research project relates to more traditional ideas in the Monte Carlo literature. This chapter addresses that need by identifying a Poisson process model that unifies the perturbation and accept-reject views of Monte Carlo simulation. Many existing methods can be analyzed in this framework. The chapter reviews Poisson processes and defines a Poisson process model for Monte Carlo methods. This model is used to generalize the perturbation trick to infinite spaces by constructing Gumbel processes, random functions whose maxima are located at samples over infinite spaces. The model is also used to analyze A* sampling and OS*, two methods from distinct Monte Carlo families.
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