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On Fuzzy Clustering for Categorical Multivariate Data Induced by Polya Mixture Models

机译:多达混合模型诱导的分类多变量数据的模糊聚类

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In this paper, three fuzzy clustering models for categorical multivariate data are proposed based on the Polya mixture model and q-divergence. A conventional fuzzy clustering model for categorical multivariate data is constructed by fuzzifying a multinomial mixture model (MMM) via regularizing Kullback-Leibler (KL) divergence appearing in a pseudo likelihood of an MMM, whereas MMM is extended to a Polya mixture model (PMM) and no fuzzy counterpart to PMM is proposed. The first proposed model is constructed by fuzzifying PMM, by means of regularizing KL-divergence appearing in a pseudo likelihood of the model. The other two models are derived by modifying the first proposed algorithm, which is based on the fact that one of the three fuzzy clustering models for vectorial data is similar to the first proposed model, and that another fuzzy clustering model for vectorial data can connect the other two fuzzy clustering models for vectorial data based on q-divergence. In numerical experiments, the properties of the membership of the proposed methods were observed using an artificial dataset.
机译:在本文中,提出了三种用于分类多变量数据的模糊聚类模型,基于PolyA混合物模型和Q分歧。通过规则化kullback-Leibler(KL)发散在毫米的伪可能性中的伪敏感性模型(KL)发散来构建用于分类多变量数据的传统模糊聚类模型,而MMM延伸到多达混合物模型(PMM)提出了对PMM的模糊对应物。第一所提出的模型是通过模糊PMM构成的,通过规则的kl分歧显示在模型的伪可能性中。通过修改第一个提出的算法来导出另外两个模型,这基于矢量数据的三个模糊聚类模型之一类似于第一个提出的模型,并且矢量数据的另一个模糊聚类模型可以连接基于Q发散的矢量数据的其他两个模糊聚类模型。在数值实验中,使用人工数据集观察所提出的方法的成员资格的性质。

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