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Pitfalls in the Implementation of Bayesian Hierarchical Modeling of Areal Count Data: An Illustration Using BYM and Leroux Models

机译:贝叶斯计数数据的贝叶斯层次建模的实现中的陷阱:使用BYM和Leroux模型的说明

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Several different hierarchical Bayesian models can be used for the estimation of spatial risk patterns based on spatially aggregated count data. Typically, the resulting posterior distributions of the model parameters cannot be expressed in closed forms, and MCMC approaches are required for inference. However, implementations of hierarchical Bayesian models for such areal data are error-prone. Also, different implementation methods exist, and a surprisingly large variability may develop between the methods as well as between the different MCMC runs of one method. This paper has four main goals: (1) to present a point by point annotated code of two commonly used models for areal count data, namely the BYM and the Leroux models (2) to discuss technical variations in the implementation of a formula-driven sampler and to assess the variability in the posterior results from various alternative implementations (3) to give graphical tools to compare sample(r)s which complement existing convergence diagnostics and (4) to give various practical tips for implementing samplers.
机译:可以使用几种不同的分层贝叶斯模型基于空间汇总的计数数据来估计空间风险模式。通常,模型参数的后验分布不能以封闭形式表示,并且需要使用MCMC方法进行推断。但是,用于此类面数据的分层贝叶斯模型的实现容易出错。同样,存在不同的实现方法,并且在一种方法之间以及在不同方法的不同MCMC运行之间可能会出现出乎意料的大差异。本文有四个主要目标:(1)提出两个常用的面积计数数据模型的逐点注释代码,即BYM和Leroux模型(2)讨论公式驱动的实现中的技术变化采样器,并评估各种替代实现的后验结果的可变性(3)提供图形工具来比较与现有收敛诊断相辅相成的样本(r),以及(4)提供实施采样器的各种实用技巧。

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