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Local Statistical Modeling via a Cluster-Weighted Approach with Elliptical Distributions

机译:通过具有椭圆分布的聚类加权方法进行局部统计建模

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摘要

Cluster-weighted modeling (CWM) is a mixture approach to modeling the joint probability of data coming from a heterogeneous population. Under Gaussian assumptions, we investigate statistical properties of CWM from both theoretical and numerical point of view; in particular, we show that Gaussian CWM includes mixtures of distributions and mixtures of regressions as special cases. Further, we introduce CWM based on Student-t distributions, which provides a more robust fit for groups of observations with longer than normal tails or noise data. Theoretical results are illustrated using some empirical studies, considering both simulated and real data. Some generalizations of such models are also outlined.
机译:聚类加权建模(CWM)是一种混合方法,用于对来自异类总体的数据的联合概率进行建模。在高斯假设下,我们从理论和数值角度研究了连续波加权平均的统计特性。特别是,我们表明高斯CWM包括分布的混合和回归的混合作为特殊情况。此外,我们引入了基于Student-t分布的CWM,它为尾数比正常尾数或噪声数据长的观察组提供了更强大的拟合。理论结果通过一些实证研究加以说明,同时考虑了模拟数据和实际数据。还概述了此类模型的一些概括。

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