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Bayesian model comparison based on expected posterior priors for discrete decomposable graphical models

机译:基于预期后验先验的离散可分解图形模型贝叶斯模型比较

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The implementation of the Bayesian paradigm to model comparison can be problematic. In particular, prior distributions on the parameter space of each candidate model require special care. While it is well known that improper priors cannot be routinely used for Bayesian model comparison, we claim that also the use of proper conventional priors under each model should be regarded as suspicious, especially when comparing models having different dimensions. The basic idea is that priors should not be assigned separately under each model; rather they should be related across models, in order to acquire some degree of compatibility, and thus allow fairer and more robust comparisons. In this connection, the intrinsic prior as well as the expected posterior prior (EPP) methodology represent a useful tool. In this paper we develop a procedure based on EPP to perform Bayesian model comparison for discrete undirected decomposable graphical models, although our method could be adapted to deal also with directed acyclic graph models. We present two possible approaches. One based on imaginary data, and one which makes use of a limited number of actual data. The methodology is illustrated through the analysis of a 2 x 3 x 4 contingency table.
机译:用贝叶斯模型进行模型比较可能会有问题。特别是,每个候选模型的参数空间上的先验分布都需要特别注意。众所周知,不正确的先验不能常规用于贝叶斯模型比较,但我们主张在每个模型下使用适当的常规先验也应视为可疑的,尤其是在比较具有不同维度的模型时。基本思想是,不应在每种模式下分别分配优先权;而是应该在各个模型之间建立关联,以便获得一定程度的兼容性,从而进行更公平,更可靠的比较。就此而言,内在先验以及预期后验先验(EPP)方法论是一种有用的工具。在本文中,我们开发了一种基于EPP的程序,以对离散无向可分解图形模型进行贝叶斯模型比较,尽管我们的方法也可以适用于处理有向无环图模型。我们提出两种可能的方法。一种基于虚构数据,另一种基于有限数量的实际数据。通过分析2 x 3 x 4列联表来说明该方法。

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