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Heteroscedastic factor mixture analysis

机译:异方差因素混合物分析

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摘要

When data come from an unobserved heterogeneous population, common factor analysis is not appropriate to estimate the underlying constructs of interest. By replacing the traditional assumption of Gaussian distributed factors by a finite mixture of multivariate Gaussians, the unobserved heterogeneity can be modelled by latent classes. In so doing, we obtain a particular factor mixture analysis with heteroscedastic components. In this paper, the model is presented and a maximum likelihood estimation procedure via the expectation-maximization algorithm is developed. We also show that the approach well performs as a dimensionally reduced model-based clustering. Two real applications are illustrated and performances are compared to standard model-based clustering methods.
机译:当数据来自未观察到的异质群体时,不适合使用公共因子分析来估计感兴趣的基础结构。通过用多元高斯的有限混合代替传统的高斯分布因子假设,可以通过潜在类对未观察到的异质性进行建模。这样,我们获得了具有异方差成分的特定因子混合分析。本文提出了该模型,并开发了通过期望最大化算法的最大似然估计程序。我们还表明,该方法可以很好地用作基于维度缩减的基于模型的聚类。说明了两个实际应用,并将性能与基于标准模型的聚类方法进行了比较。

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