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Entropy-type classification maximum likelihood algorithms for mixture models

机译:混合模型的熵类型分类最大似然算法

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摘要

Mixtures of distributions are popularly used as probability models for analyzing grouped data. Classification maximum likelihood (CML) is an important maximum likelihood approach to clustering with mixture models. Yang et al. extended CML to fuzzy CML. Although fuzzy CML presents better results than CML, it is always affected by the fuzziness index parameter. In this paper, we consider fuzzy CML with an entropy-regularization term to create an entropy-type CML algorithm. The proposed entropy-type CML is a parameter-free algorithm for mixture models. Some numerical and real-data comparisons show that the proposed method provides better results than some existing methods.
机译:分布的混合通常用作分析分组数据的概率模型。分类最大似然(CML)是一种重要的最大似然方法,用于与混合模型进行聚类。杨等。将CML扩展为模糊CML。尽管模糊CML的结果要比CML更好,但它始终受模糊指数指标的影响。在本文中,我们考虑使用带有熵正则化项的模糊CML来创建熵型CML算法。所提出的熵类型CML是用于混合模型的无参数算法。一些数值和实际数据的比较表明,所提出的方法提供了比现有方法更好的结果。

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