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Dimensionally Reduced Model-Based Clustering Through Mixtures of Factor Mixture Analyzers

机译:通过因子混合分析器的混合以基于维的方式减少基于模型的聚类

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Dimensionally reduced model-based clustering methods are recently receiving a wide interest in statistics as a tool for performing simultaneously clustering and dimension reduction through one or more latent variables. Among these, Mixtures of Factor Analyzers assume that, within each component, the data are generated according to a factor model, thus reducing the number of parameters on which the covariance matrices depend. In Factor Mixture Analysis clustering is performed through the factors of an ordinary factor analysis which are jointly modelled by a Gaussian mixture. The two approaches differ in genesis, parameterization and consequently clustering performance. In this work we propose a model which extends and combines them. The proposed Mixtures of Factor Mixture Analyzers provide a unified class of dimensionally reduced mixture models which includes the previous ones as special cases and could offer a powerful tool for modelling non-Gaussian latent variables.
机译:最近,作为一种通过一个或多个潜在变量同时执行聚类和降维的工具,基于维数缩减的基于模型的聚类方法在统计学中受到广泛关注。其中,因子分析器的混合物假定在每个组件内,数据都是根据因子模型生成的,因此减少了协方差矩阵所依赖的参数数量。在因子混合分析中,聚类是通过普通因子分析的因子进行的,这些因子由高斯混合模型共同建模。两种方法的起源,参数化和聚类性能不同。在这项工作中,我们提出了一个扩展和组合它们的模型。拟议中的因子混合分析仪混合物提供了统一的一类降维混合模型,其中包括作为特殊情况的先前模型,并且可以为建模非高斯潜变量提供强大的工具。

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