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Flexible clustering via extended mixtures of common t-factor analyzers

机译:通过常见t因子分析仪的扩展混合物进行灵活的聚类

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摘要

Mixtures of t-factor analyzers have been broadly used for model-based density estimation and clustering of high-dimensional data from a heterogeneous population with longer-than-normal tails or atypical observations. To reduce the number of parameters in the component covariance matrices, the mixtures of common t-factor analyzers (MCtFA) have been recently proposed by assuming a common factor loading across different components. In this paper, we present an extended version of MCtFA using distinct covariance matrices for component errors. The modified mixture model offers a more appropriate way to represent the data in a graphical fashion. Two flexible EM-type algorithms are developed for iteratively computing maximum likelihood estimates of parameters. Practical considerations for the specification of starting values, model-based clustering, classification of new subject and identification of potential outliers are also provided. We demonstrate the superiority of the proposed methodology by analyzing the Italian wine data and a simulation study.
机译:T因子分析仪的混合物已广泛用于基于模型的密度估计和来自具有比正常尾巴更长的非均质种群或非典型观测值的高维数据的聚类。为了减少组件协方差矩阵中的参数数量,最近通过假设跨不同组件的公共因子负载,提出了通用t因子分析器(MCtFA)的混合物。在本文中,我们为组件错误提供了使用不同协方差矩阵的MCtFA的扩展版本。修改后的混合模型提供了一种更合适的方式以图形方式表示数据。开发了两种灵活的EM类型算法,用于迭代计算参数的最大似然估计。还提供了有关起始值规范,基于模型的聚类,新主题的分类以及潜在离群值识别的实际考虑。我们通过分析意大利葡萄酒数据和模拟研究证明了所提出方法的优越性。

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