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Cluster-weighted -factor analyzers for robust model-based clustering and dimension reduction

机译:聚类加权因子分析仪,用于基于模型的鲁棒聚类和降维

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Cluster-weighted models represent a convenient approach for model-based clustering, especially when the covariates contribute to defining the cluster-structure of the data. However, applicability may be limited when the number of covariates is high and performance may be affected by noise and outliers. To overcome these problems, common/uncommon -factor analyzers for the covariates, and a -distribution for the response variable, are here assumed in each mixture component. A family of twenty parsimonious variants of this model is also presented and the alternating expectation-conditional maximization algorithm, for maximum likelihood estimation of the parameters of all models in the family, is described. Artificial and real data show that these models have very good clustering performance and that the algorithm is able to recover the parameters very well.
机译:聚类加权模型代表了一种基于模型的聚类的便捷方法,尤其是当协变量有助于定义数据的聚类结构时。但是,当协变量的数量很大时,适用性可能会受到限制,并且性能可能会受到噪声和离群值的影响。为了克服这些问题,在每个混合成分中都假定了用于协变量的公共/非公共因素分析器,以及用于响应变量的-分布。还提出了该模型的二十个简约变体家族,并描述了用于期望族中所有模型参数的最大似然估计的交替期望条件最大化算法。人工和真实数据表明,这些模型具有非常好的聚类性能,并且该算法能够很好地恢复参数。

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