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A note on Markov chain Monte Carlo sweep strategies

机译:关于马尔可夫链蒙特卡洛扫描策略的注记

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Markov chain Monte Carlo (MCMC) routines have become a fundamental means for generating random variates from distributions otherwise difficult to sample. The Hastings sampler, which includes the Gibbs and Metropolis samplers as special cases, is the most popular MCMC method. A number of implementations are available for running these MCMC routines varying in the order through which the components or blocks of the random vector of interest X are cycled or visited. The two most common implementations are the deterministic sweep strategy, whereby the components or blocks of X are updated successively and in a fixed order, and the random sweep strategy, whereby the coordinates or blocks of X are updated in a randomly determined order. In this article, we present a general representation for MCMC updating schemes showing that the deterministic scan is a special case of the random scan. We also discuss decision criteria for choosing a sweep strategy.
机译:马尔可夫链蒙特卡洛(MCMC)例程已成为从分布中生成随机变量的基本方法,否则很难采样。 Hastings采样器是最流行的MCMC方法,其中包括Gibbs和Metropolis采样器作为特例。有多种实现方式可用于运行这些MCMC例程,该过程以循环或访问感兴趣的随机向量X的组件或块的顺序变化。两个最常见的实现是确定性扫描策略,其中X的组件或块以固定顺序连续更新,以及随机扫描策略,其中X的坐标或块以随机确定的顺序更新。在本文中,我们提供了MCMC更新方案的一般表示,表明确定性扫描是随机扫描的特殊情况。我们还将讨论选择扫描策略的决策标准。

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