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A semiparametric Bayesian approach to generalized partial linear mixed models for longitudinal data

机译:纵向数据的广义局部线性混合模型的半参数贝叶斯方法

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摘要

A generalized partial linear mixed model (GPLMM) is a natural extension of generalized linear mixed models (GLMMs) and partial linear models (PLMs). Almost all existing methods for analyzing GPLMMs are developed on the basis of the assumption that random effects are distributed as a fully parametric distribution such as normal distribution. In this paper, we extend the GPLMMs by specifying a Dirichlet process prior for a general distribution of random effects, and propose a semiparametric Bayesian approach by simultaneously utilizing an approximation truncation Dirichlet process prior of the random effects and a P-spline approximation of the smoothing function. By combining the block Gibbs sampler and the Metropolis-Hastings algorithm, a hybrid algorithm is presented for sampling observations from the posterior distribution. A procedure for selecting the degree of the polynomial components in nonparametric approximation using Bayes factor is given via path sampling. Some goodness-of-fit statistics are proposed to evaluate the plausibility of the posited model. Several simulation studies and a real example are presented to illustrate the proposed methodologies.
机译:广义局部线性混合模型(GPLMM)是广义线性混合模型(GLMM)和局部线性模型(PLM)的自然扩展。几乎所有现有的用于分析GPLMM的方法都是在以下假设的基础上开发的:随机效应以正态分布等完全参数分布的形式分布。在本文中,我们通过为随机效应的一般分布指定一个Dirichlet过程来扩展GPLMM,并通过同时利用随机效应之前的近似截断Dirichlet过程和平滑的P样条近似来提出半参数贝叶斯方法功能。通过结合块Gibbs采样器和Metropolis-Hastings算法,提出了一种混合算法,用于从后验分布中采样观测值。通过路径采样给出了使用贝叶斯因子在非参数近似中选择多项式分量的次数的过程。提出了一些拟合优度统计数据,以评估假设模型的合理性。提出了一些仿真研究和一个实际例子来说明所提出的方法。

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