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Mixtures of restricted skew-t factor analyzers with common factor loadings

机译:具有普通因子载荷的限制偏光型分析仪的混合物

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摘要

Mixtures of common t factor analyzers (MCtFA) have been shown its effectiveness in robustifying mixtures of common factor analyzers (MCFA) when handling model-based clustering of the high-dimensional data with heavy tails. However, the MCtFA model may still suffer from a lack of robustness against observations whose distributions are highly asymmetric. This paper presents a further robust extension of the MCFA and MCtFA models, called the mixture of common restricted skew-t factor analyzers (MCrstFA), by assuming a restricted multivariate skew-t distribution for the common factors. The MCrstFA model can be used to accommodate severely non-normal (skewed and leptokurtic) random phenomena while preserving its parsimony in factor-analytic representation and performing graphical visualization in low-dimensional plots. A computationally feasible expectation conditional maximization either algorithm is developed to carry out maximum likelihood estimation. The numbers of factors and mixture components are simultaneously determined based on common likelihood penalized criteria. The usefulness of our proposed model is illustrated with simulated and real datasets, and experimental results signify its superiority over some existing competitors.
机译:当用重尾部处理基于模型的聚类时,常见的T因子分析仪(MCTFA)的混合物已经证明了其在普通因子分析仪(MCFA)的混合物中的有效性。然而,MCTFA模型仍可能缺乏对分布高度不对称的观测的鲁棒性。本文介绍了MCFA和MCTFA模型的进一步稳健延伸,称为共同限制的偏光T因子分析仪(MCRSTFA)的混合,假设常见因素的受限制的多元偏差分布。 MCRSTFA模型可用于适应严重的非正常(倾斜和溶渗)随机现象,同时保留其在因子分析表示中的规定并在低维图中进行图形可视化。计算可行的期望条件最大化任一算法以执行最大似然估计。基于常见的似然惩罚标准同时确定因子和混合物组分的数量。我们所提出的模型的有用性用模拟和实际数据集说明,实验结果表明了对现有竞争对手的优势。

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