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Identifiability and convergence issues for Markov chain Monte Carlo fitting of spatial models.

机译:空间模型的马尔可夫链蒙特卡罗拟合的可识别性和收敛性问题。

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摘要

The marked increase in popularity of Bayesian methods in statistical practice over the last decade owes much to the simultaneous development of Markov chain Monte Carlo (MCMC) methods for the evaluation of requisite posterior distributions. However, along with this increase in computing power has come the temptation to fit models larger than the data can readily support, meaning that often the propriety of the posterior distributions for certain parameters depends on the propriety of the associated prior distributions. An important example arises in spatial modelling, wherein separate random effects for capturing unstructured heterogeneity and spatial clustering are of substantive interest, even though only their sum is well identified by the data. Increasing the informative content of the associated prior distributions offers an obvious remedy, but one that hampers parameter interpretability and may also significantly slow the convergence of the MCMC algorithm. In this paper we investigate the relationship among identifiability, Bayesian learning and MCMC convergence rates for a common class of spatial models, in order to provide guidance for prior selection and algorithm tuning. We are able to elucidate the key issues with relatively simple examples, and also illustrate the varying impacts of covariates, outliers and algorithm starting values on the resulting algorithms and posterior distributions. Copyright 2000 John Wiley & Sons, Ltd.
机译:在过去的十年中,贝叶斯方法在统计实践中的普及率显着提高,这很大程度上归功于用于评估必要的后验分布的马尔可夫链蒙特卡洛(MCMC)方法的同时发展。但是,随着计算能力的提高,人们倾向于选择比数据容易支持的模型大的拟合模型,这意味着某些参数的后验分布的适当性通常取决于相关先验分布的适当性。一个重要的例子出现在空间建模中,其中,尽管数据可以很好地识别出它们的总和,但用于捕获非结构化异质性和空间聚类的单独随机效应却具有实质意义。增加相关的先验分布的信息内容提供了一种明显的解决方法,但是这种方法阻碍了参数的可解释性,也可能会大大减慢MCMC算法的收敛速度。在本文中,我们研究了常见类别的空间模型的可识别性,贝叶斯学习和MCMC收敛速度之间的关系,以便为先验选择和算法调整提供指导。我们能够通过相对简单的示例来阐明关键问题,并说明协变量,离群值和算法初始值对所得算法和后验分布的不同影响。版权所有2000 John Wiley&Sons,Ltd.

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