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Additive mixed models with approximate Dirichlet process mixtures: the EM approach

机译:具有近似Dirichlet工艺混合物的加性混合模型:EM方法

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We consider additive mixed models for longitudinal data with a nonlinear time trend. As random effects distribution an approximate Dirichlet process mixture is proposed that is based on the truncated version of the stick breaking presentation of the Dirichlet process and provides a Gaussian mixture with a data driven choice of the number of mixture components. The main advantage of the specification is its ability to identify clusters of subjects with a similar random effects structure. For the estimation of the trend curve the mixed model representation of penalized splines is used. An Expectation-Maximization algorithm is given that solves the estimation problem and that exhibits advantages over Markov chain Monte Carlo approaches, which are typically used when modeling with Dirichlet processes. The method is evaluated in a simulation study and applied to theophylline data and to body mass index profiles of children.
机译:我们考虑具有非线性时间趋势的纵向数据的加性混合模型。作为随机效应分布,提出了一种近似的Dirichlet过程混合物,它基于Dirichlet过程的不连续断裂表示的截断形式,并为高斯混合物提供了数据驱动的混合物组分数量的选择。该规范的主要优势在于它能够识别具有相似随机效应结构的对象群。为了估计趋势曲线,使用了惩罚样条的混合模型表示。给出了期望最大化算法,该算法解决了估计问题,并展现了优于马尔可夫链蒙特卡洛方法的优势,后者通常在使用Dirichlet过程建模时使用。该方法在模拟研究中进行了评估,并应用于茶碱数据和儿童体重指数曲线。

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