空间统计与贝叶斯计算

J. Besag, P. Green
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引用次数: 528

摘要

Markov链蒙特卡罗(MCMC)算法,如Gibbs采样器,几年来在图像分析和其他空间统计领域提供了贝叶斯推理机,建立在Ulf Grenander的开创性思想之上。最近,超参数可以作为更新计划的一部分的观察,以及几乎任何多元分布都相当于一个马尔可夫随机场的事实,为在一般贝叶斯计算中使用MCMC开辟了道路。本文回顾了MCMC在贝叶斯推理中的早期发展,在引入辅助变量的基础上,回顾了统计物理中最近的一些计算进展,并讨论了MCMC在贝叶斯应用中的当前和未来的相关性。本文简要介绍了一种用于农业田间试验贝叶斯分析的简单MCMC实现方法,具有一定的实践经验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spatial Statistics and Bayesian Computation
on Wednesday, May 6th, 1992, Professor B. W. Silverman in the Chair] SUMMARY Markov chain Monte Carlo (MCMC) algorithms, such as the Gibbs sampler, have provided a Bayesian inference machine in image analysis and in other areas of spatial statistics for several years, founded on the pioneering ideas of Ulf Grenander. More recently, the observation that hyperparameters can be included as part of the updating schedule and the fact that almost any multivariate distribution is equivalently a Markov random field has opened the way to the use of MCMC in general Bayesian computation. In this paper, we trace the early development of MCMC in Bayesian inference, review some recent computational progress in statistical physics, based on the introduction of auxiliary variables, and discuss its current and future relevance in Bayesian applications. We briefly describe a simple MCMC implementation for the Bayesian analysis of agricultural field experiments, with which we have some practical experience.
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