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Bayesian case-deletion model complexity and information criterion

机译:贝叶斯案例删除模型的复杂度和信息准则

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摘要

We establish a connection between Bayesian case influence measures for assessing the influence of individual observations and Bayesian predictive methods for evaluating the predictive performance of a model and comparing different models fit to the same dataset. Based on such a connection, we formally propose a new set of Bayesian case-deletion model complexity (BCMC) measures for quantifying the effective number of parameters in a given statistical model and its properties in linear models are explored. Adding certain functions of BCMC to a conditional deviance function leads to a Bayesian case-deletion information criterion (BCIC) for comparing models. We systematically investigate some properties of BCIC and its connections with other information criteria, such as the Deviance Information Criterion (DIC). We illustrate the proposed methodology for the linear mixed model with simulations and a real data example.
机译:我们在评估单个观察结果影响的贝叶斯案例影响度量与评估模型的预测性能并比较适合同一数据集的不同模型之间建立了贝叶斯预测方法之间的联系。基于这种联系,我们正式提出了一套新的贝叶斯案例删除模型复杂度(BCMC)措施,用于量化给定统计模型中参数的有效数量,并探索了线性模型中的属性。将BCMC的某些功能添加到条件偏差函数中会导致用于比较模型的贝叶斯案例删除信息标准(BCIC)。我们系统地研究了BCIC的某些属性及其与其他信息标准(例如,偏差信息标准(DIC))的联系。我们通过仿真和一个实际数据示例说明了线性混合模型的拟议方法。

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