Estimating drift and minorization coefficients for Gibbs sampling algorithms

IF 0.8 Q3 STATISTICS & PROBABILITY
David A. Spade
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引用次数: 1

Abstract

Abstract Gibbs samplers are common Markov chain Monte Carlo (MCMC) algorithms that are used to sample from intractable probability distributions when sampling directly from full conditional distributions is possible. These types of MCMC algorithms come up frequently in many applications, and because of their popularity it is important to have a sense of how long it takes for the Gibbs sampler to become close to its stationary distribution. To this end, it is common to rely on the values of drift and minorization coefficients to bound the mixing time of the Gibbs sampler. This manuscript provides a computational method for estimating these coefficients. Herein, we detail the several advantages of the proposed methods, as well as the limitations of this approach. These limitations are primarily related to the “curse of dimensionality”, which for these methods is caused by necessary increases in the numbers of initial states from which chains need be run and the need for an exponentially increasing number of grid points for estimation of minorization coefficients.
吉布斯采样算法的漂移系数和二次化系数估计
摘要吉布斯采样器是常见的马尔可夫链蒙特卡罗(MCMC)算法,当可以直接从全条件分布采样时,该算法用于从棘手的概率分布采样。这些类型的MCMC算法在许多应用中经常出现,由于它们的流行性,了解吉布斯采样器需要多长时间才能接近其平稳分布是很重要的。为此,通常依赖漂移系数和二次化系数的值来约束吉布斯采样器的混合时间。本文提供了一种估计这些系数的计算方法。在此,我们详细介绍了所提出的方法的几个优点,以及这种方法的局限性。这些限制主要与“维度诅咒”有关,对于这些方法来说,这是由需要运行链的初始状态数量的必要增加以及用于估计二次化系数的网格点数量的指数增加所引起的。
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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来源期刊
Monte Carlo Methods and Applications
Monte Carlo Methods and Applications STATISTICS & PROBABILITY-
CiteScore
1.20
自引率
22.20%
发文量
31
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