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Bayesian Model Selection for Incomplete Data Using the Posterior Predictive Distribution

机译:使用后验预测分布的不完整数据的贝叶斯模型选择

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摘要

We explore the use of a posterior predictive loss criterion for model selection for incomplete longitudinal data. We begin by identifying a property that most model selection criteria for incomplete data should consider. We then show that a straightforward extension of the Gelfand and Ghosh (1998, Biometrika, 85, 1-11) criterion to incomplete data has two problems. First, it introduces an extra term (in addition to the goodness of fit and penalty terms) that compromises the criterion. Second, it does not satisfy the aforementioned property. We propose an alternative and explore its properties via simulations and on a real dataset and compare it to the deviance information criterion (DIC). In general, the DIC outperforms the posterior predictive criterion, but the latter criterion appears to work well overall and is very easy to compute unlike the DIC in certain classes of models for missing data.
机译:我们探索使用后验预测损失准则进行不完整纵向数据模型选择。我们首先确定大多数不完整数据的模型选择标准应考虑的属性。然后我们表明,将Gelfand和Ghosh(1998,Biometrika,85,1-11)标准直接扩展到不完整数据有两个问题。首先,它引入了一个额外的条件(除了拟合优度和罚分条件之外),从而损害了标准。第二,它不满足上述特性。我们提出了一种替代方案,并通过模拟和真实数据集探索其性质,并将其与偏差信息标准(DIC)进行比较。通常,DIC优于后验预测准则,但后者准则在总体上运作良好且很容易计算,这与某些类型的缺失数据模型中的DIC不同。

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