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A Graphical Diagnostic for Identifying Influential Model Choices in Bayesian Hierarchical Models

机译:用于确定贝叶斯层次模型中影响模型选择的图形诊断

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摘要

Real-world phenomena are frequently modelled by Bayesian hierarchical models. The building-blocks in such models are the distribution of each variable conditional on parent and/or neighbour variables in the graph. The specifications of centre and spread of these conditional distributions may be well motivated, whereas the tail specifications are often left to convenience. However, the posterior distribution of a parameter may depend strongly on such arbitrary tail specifications. This is not easily detected in complex models. In this article, we propose a graphical diagnostic, the Local critique plot, which detects such influential statistical modelling choices at the node level. It identifies the properties of the information coming from the parents and neighbours (the local prior) and from the children and co-parents (the lifted likelihood) that are influential on the posterior distribution, and examines local conflict between these distinct information sources. The Local critique plot can be derived for all parameters in a chain graph model.
机译:现实世界中的现象通常由贝叶斯层次模型来建模。这种模型中的构件是每个变量的分布,该分布以图形中的父变量和/或邻居变量为条件。这些条件分布的中心和散布的规格可能会受到很好的激励,而尾部的规格通常是为了方便。但是,参数的后验分布可能在很大程度上取决于这种任意的尾部规范。在复杂模型中不容易检测到这一点。在本文中,我们提出了一种图形诊断方法,即“本地批判图”,它可以在节点级别检测这种有影响力的统计建模选择。它确定了影响后验分布的,来自父母和邻居(本地先验)以及来自儿童和同父母的信息(被提升的可能性)的属性,并研究了这些不同信息源之间的局部冲突。可以为链图模型中的所有参数导出局部批判图。

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