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Growth Mixture Modeling with Measurement Selection

机译:测量选择的生长混合物建模

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Growth mixture models are an important tool for detecting group structure in repeated measures data. Unlike traditional clustering methods, they explicitly model the repeated measurements on observations, and the statistical framework they are based on allows for model selection methods to be used to select the number of clusters. However, the basic growth mixture model makes the assumption that all of the measurements in the data have grouping information that separate the clusters. In other clustering contexts, it has been shown that including non-clustering variables in clustering procedures can lead to poor estimation of the group structure both in terms of the number of clusters and cluster membership/parameters. In this paper, we present an extension of the growth mixture model that allows for incorporation of stepwise variable selection based on the work done by Maugis, Celeux, and Martin-Magniette (2009) and Raftery and Dean (2006). Results presented on a simulation study suggest that the method performs well in correctly selecting the clustering variables and improves on recovery of the cluster structure compared with the basic growth mixture model. The paper also presents an application of the model to a clinical study dataset and concludes with a discussion and suggestions for directions of future work in this area.
机译:生长混合模型是用于检测重复测量数据中的组结构的重要工具。与传统聚类方法不同,它们显式模拟了对观察的重复测量,以及它们基于的统计框架允许用于选择群集数量的模型选择方法。然而,基本增长混合模型假设数据中的所有测量都具有分组与分离群集的信息。在其他群集上下文中,已经显示出在集群和群集成员/参数的数量方面,包括聚类过程中的非聚类变量可能导致组结构差。在本文中,我们展示了生长混合模型的延伸,该模型允许基于Maugis,Celeux和Martin-Magniette(2009)和raftery和Dean(2006)所做的工作纳入逐步变量选择。仿真研究中提出的结果表明,该方法在正确选择聚类变量时表现良好,并改善与基本生长混合模型相比群集结构的恢复。本文还展示了该模型将模型应用于临床研究数据集,并结束了该地区未来工作方向的讨论和建议。

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