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Empirical Bayes estimators in hierarchical models with mixture priors

机译:具有混合先验的层次模型中的经验贝叶斯估计量

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摘要

We consider subgroup analyses within the framework of hierarchical modeling and empirical Bayes (EB) methodology for general priors, thereby generalizing the normal-normal model. By doing this one obtains greater flexibility in modeling. We focus on mixture priors, that is, on the situation where group effects are exchangeable within clusters of subgroups only. We establish theoretical results on accuracy, precision, shrinkage and selection bias of EB estimators under the general priors. The impact of model misspecification is investigated and the applicability of the methodology is illustrated with datasets from the (medical) literature.
机译:我们在一般先验的层次模型和经验贝叶斯(EB)方法论框架内考虑亚组分析,从而推广了法线-法线模型。通过这样做,可以在建模中获得更大的灵活性。我们关注混合先验,即只在子群的集群内交换群效应的情况。我们在一般先验条件下建立了有关EB估计量的准确性,精确度,收缩率和选择偏差的理论结果。研究了模型错误指定的影响,并用(医学)文献中的数据集说明了该方法的适用性。

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