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Bayesian Analysis of Cross-Section and Clustered Data Treatment Models.

机译:截面和聚类数据处理模型的贝叶斯分析。

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摘要

This paper is concerned with the problem of determining the effect of a categorical treatment variable on a response given that the treatment is non-randomly assigned and the response (on any given subject) is observed for one setting of the treatment. We consider classes of models that are designed for such problems. These models are subjected to a fully Bayesian analysis based on Markov chain Monte Carlo methods. The analysis of the treatment effect is then based on, amongst other things, the posterior distribution of the potential outcomes (counter-factuals) at the subject level, which is obtained as a by-product of the MCMC simulation procedure. The analysis is extended to models with categorical treatments and binary and clustered outcomes. The problem of model comparisons is also considered. Different aspects of the methodology are illustrated through two data examples.
机译:本文涉及确定分类治疗变量对反应的影响的问题,因为该治疗是非随机分配的,并且在一种治疗设置下观察到了对任何给定受试者的反应。我们考虑针对此类问题设计的模型类别。对这些模型进行了基于马尔可夫链蒙特卡罗方法的完全贝叶斯分析。然后,除其他事项外,分析治疗效果的依据是受试者水平上潜在结局(反事实)的后验分布,这是作为MCMC模拟程序的副产品而获得的。该分析扩展到具有分类处理以及二元和聚类结果的模型。还考虑了模型比较的问题。通过两个数据示例说明了该方法的不同方面。

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