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Cluster analysis of longitudinal profiles with subgroups

机译:具有子组的纵向剖面的聚类分析

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In this paper, we cluster profiles of longitudinal data using a penalized regression method. Specifically, we allow heterogeneous variation of longitudinal patterns for each subject, and utilize a pairwise-grouping penalization on coefficients of the nonparametric B-spline models to form subgroups. Consequently, we identify clusters based on different patterns of the predicted longitudinal curves. One advantage of the proposed method is that there is no need to pre-specify the number of clusters; instead the number of clusters is selected automatically through a model selection criterion. Our method is also applicable for unbalanced data where different subjects could have measurements at different time points. To implement the proposed method, we develop an alternating direction method of multipliers (ADMM) algorithm which has the desirable convergence property. In theory, we establish the consistency properties for approximated nonparametric function estimation and subgrouping memberships. In addition, we show that our method outperforms the existing competitive approaches in our simulation studies and real data example.
机译:在本文中,我们使用惩罚回归方法对纵向数据的分布进行聚类。具体来说,我们允许每个主题的纵向模式的异构变化,并利用对非参数B样条模型系数的成对分组惩罚来形成子组。因此,我们根据预测的纵向曲线的不同模式识别聚类。所提出的方法的一个优点是不需要预先指定簇的数量。而是通过模型选择标准自动选择簇数。我们的方法也适用于不平衡的数据,其中不同的对象可能在不同的时间点进行测量。为了实现所提出的方法,我们开发了一种具有理想收敛特性的乘数交替方向方法(ADMM)算法。从理论上讲,我们为近似的非参数函数估计和子成员资格建立一致性属性。此外,在模拟研究和实际数据示例中,我们证明了我们的方法优于现有的竞争方法。

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