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Model-based clustering of censored data via mixtures of factor analyzers

机译:基于模型的群体通过因子分析仪混合物进行审查数据

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摘要

Mixtures of factor analyzers (MFA) provide a promising tool for modeling and clustering high-dimensional data that contain an overwhelmingly large number of attributes measured on individuals arisen from a heterogeneous population. Due to the restriction of experimental apparatus, measurements can be limited to some lower and/or upper detection bounds and thus the data are possibly censored. In this paper, we extend the MFA to accommodate censored data, and the new model is called the MFA with censoring (MFAC). A computationally feasible alternating expectation conditional maximization (AECM) algorithm is developed to carry out maximum likelihood estimation of the MFAC model. Practical issues related to model-based clustering and recovery of censored data are also discussed. Simulation studies are conducted to examine the effect of censoring in classification, estimation and cluster validation. We also present an application of the proposed approach to two real data examples in which a certain number of left-censored observations are present. (C) 2019 Elsevier B.V. All rights reserved.
机译:因子分析仪(MFA)的混合物提供了一种有助于的工具,用于建模和聚类高维数据,其包含从异构人群中出现的个体上测量的压倒性大量的属性。由于实验装置的限制,测量可以限于一些较低和/或上部检测面,因此数据可能被调用。在本文中,我们将MFA扩展以适应删除的数据,新模型称为C思官(MFAC)的MFA。开发了计算可行的交替期望条件最大化(AECM)算法以执行MFAC模型的最大似然估计。还讨论了与模型的集群和恢复审查数据相关的实际问题。进行仿真研究,以检查审查在分类,估计和集群验证中的审查。我们还提出了所提出的方法来实现两个真实数据示例,其中存在一定数量的左缩短的观察。 (c)2019年Elsevier B.V.保留所有权利。

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