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Clustering in linear mixed models with approximate Dirichlet process mixtures using EM algorithm

机译:使用EM算法在近似Dirichlet过程混合物的线性混合模型中聚类

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In linearmixed models, the assumption of normally distributed random effects is often inappropriate and unnecessarily restrictive. The proposed approximate Dirichlet process mixture assumes a hierarchical Gaussian mixture that is based on the truncated version of the stick breaking presentation of the Dirichlet process. In addition to the weakening of distributional assumptions, the specification allows to identify clusters of observations with a similar random effects structure. An Expectation- Maximization algorithm is given that solves the estimation problem and that, in certain respects, may exhibit advantages over Markov chain Monte Carlo approaches when modelling with Dirichlet processes. The method is evaluated in a simulation study and applied to the dynamics of unemployment in Germany as well as lung function growth data.
机译:在线性混合模型中,正态分布随机效应的假设通常是不合适的,并且没有必要加以限制。拟议的近似Dirichlet过程混合假定了分层的高斯混合,该混合基于Dirichlet过程的不连续表示的截断形式。除了削弱分布假设外,该规范还允许识别具有相似随机效应结构的观察结果簇。给出了期望最大化算法,该算法解决了估计问题,并且在某些方面,在利用Dirichlet过程进行建模时,可能表现出优于马尔可夫链蒙特卡洛方法的优势。该方法在模拟研究中进行了评估,并应用于德国的失业动态以及肺功能增长数据。

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