Bayesian Analysis for Random Effects Models

Junshan Shen, Catherine C Liu
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引用次数: 1

Abstract

Random effects models have been widely used to analyze correlated data sets, and Bayesian techniques have emerged as a powerful tool to fit the models. How-ever, there has been scarce literature that systematically reviews and summarizes the recent advances of Bayesian analyses of random effects models. This chapter reviews the use of the Dirichlet process mixture (DPM) prior to approximate the distribution of random errors within the general semiparametric random effects models with parametric random effects for longitudinal data setting and failure time setting separately. In a survival setting with clusters, we propose a new class of nonparametric random effects models which is motivated from the accelerated failure models. We employ a beta process prior to tact clustering and estimation simultaneously. We analyze a new data set integrated from Alzheimer ’ s disease (AD) study to illustrate the presented model and methods.
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随机效应模型的贝叶斯分析
随机效应模型已被广泛用于分析相关数据集,而贝叶斯技术已成为拟合模型的有力工具。然而,系统地回顾和总结随机效应模型贝叶斯分析的最新进展的文献很少。本章回顾了使用Dirichlet过程混合(DPM)在纵向数据设置和失效时间设置分别具有参数随机效应的一般半参数随机效应模型中近似随机误差分布的方法。在有集群的生存环境下,我们提出了一类新的非参数随机效应模型,该模型是由加速失效模型驱动的。我们同时在聚类和估计之前使用了beta过程。我们分析了从阿尔茨海默病(AD)研究中整合的新数据集来说明所提出的模型和方法。
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