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首页> 外文期刊>Statistica Sinica >MODEL-BASED LONGITUDINAL CLUSTERING WITH VARYING CLUSTER ASSIGNMENTS
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MODEL-BASED LONGITUDINAL CLUSTERING WITH VARYING CLUSTER ASSIGNMENTS

机译:具有可变集群分配的基于模型的纵向集群

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摘要

It is often of interest to perform clustering on longitudinal data, yet it is difficult to formulate an intuitive model for which estimation is computationally feasible. We propose a model-based clustering method for clustering objects that are observed over time. The proposed model can be viewed as an extension of the normal mixture model for clustering to longitudinal data. While existing models only account for clustering effects, we propose modeling the distribution of the observed values of each object as a blending of a cluster effect and an individual effect, hence also giving an estimate of how much the behavior of an object is determined by the cluster to which it belongs. Further, it is important to detect how explanatory variables affect the clustering. An advantage of our method is that it can handle multiple explanatory variables of any type through a linear modeling of the cluster transition probabilities. We implement the generalized EM algorithm using several recursive relationships to greatly decrease the computational cost. The accuracy of our estimation method is illustrated in a simulation study, and U.S. Congressional data is analyzed.
机译:在纵向数据上执行聚类通常是令人感兴趣的,但是很难建立一个直观的模型,对此模型的估计在计算上是可行的。我们提出了一种基于模型的聚类方法,用于聚类随时间推移而观察到的对象。所提出的模型可以看作是常规混合模型的扩展,用于聚类为纵向数据。虽然现有模型仅考虑聚类效应,但我们建议对每个对象的观测值分布进行建模,以将聚类效应和单个效应混合在一起,因此也可以估算出物体的行为由多少决定。它所属的集群。此外,检测解释变量如何影响聚类很重要。我们的方法的优点是,它可以通过对聚类转换概率进行线性建模来处理任何类型的多个解释变量。我们使用几种递归关系来实现广义EM算法,以大大降低计算成本。我们的估算方法的准确性在模拟研究中得到了说明,并对美国国会数据进行了分析。

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