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On the Convergence Rate of Random Permutation Sampler and ECR Algorithm in Missing Data Models

机译:缺失数据模型中随机排列采样器的收敛速度和ECR算法

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摘要

Label switching is a well-known phenomenon that occurs in MCMC outputs targeting the parameters' posterior distribution of many latent variable models. Although its appearence is necessary for the convergence of the simulated Markov chain, it turns out to be a problem in the estimation procedure. In a recent paper, Papastamoulis and Iliopoulos (J Comput Graph Stat 19:313-331, 2010) introduced the Equivalence Classes Representatives (ECR) algorithm as a solution of this problem in the context of finite mixtures of distributions. In this paper, label switching is considered under a general missing data model framework that includes as special cases finite mixtures, hidden Markov models, and Markov random fields. The use of ECR algorithm is extended to this general framework and is shown that the relabelled sequence which it produces converges to its target distribution at the same rate as the Random Permutation Sampler of Frühwirth-Schnatter (2001) and that both converge at least as fast as the Markov chain generated by the original MCMC output.
机译:标签切换是一种众所周知的现象,发生在针对许多潜在变量模型的参数后验分布的MCMC输出中。尽管它的出现对于模拟马尔可夫链的收敛是必要的,但事实证明这是估计过程中的问题。在最近的一篇论文中,Papastamoulis和Iliopoulos(J Comput Graph Stat 19:313-331,2010)引入了等价类代表(ECR)算法,以解决分布有限混合情况下的这一问题。在本文中,在通用缺失数据模型框架下考虑标签交换,该框架包括特殊情况下的有限混合,隐马尔可夫模型和马尔可夫随机字段。 ECR算法的使用扩展到此通用框架,并且表明它产生的重新标记序列以与Frühwirth-Schnatter(2001)的随机排列采样器相同的速率收敛到其目标分布,并且两者都收敛得至少一样快。作为原始MCMC输出生成的马尔可夫链。

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