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首页> 外文期刊>Journal of Advanced Computatioanl Intelligence and Intelligent Informatics >Entropy-Regularized Fuzzy Clustering for Non-Euclidean Relational Data and Indefinite Kernel Data
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Entropy-Regularized Fuzzy Clustering for Non-Euclidean Relational Data and Indefinite Kernel Data

机译:非欧式关系数据和不确定核数据的熵正则化模糊聚类

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摘要

In this paper, an entropy-regularized fuzzy clustering approach for non-Euclidean relational data and indefinite kernel data is developed that has not previously been discussed. It is important because relational data and kernel data are not always Euclidean and positive semi-definite, respectively. It is theoretically determined that an entropy-regularized approach for both non-Euclidean relational data and indefinite kernel data can be applied without using a β-spread transformation, and that two other options make the clustering results crisp for both data types. These results are in contrast to those from the standard approach. Numerical experiments are employed to verify the theoretical results, and the clustering accuracy of three entropy-regularized approaches for non-Euclidean relational data, and three for indefinite kernel data, is compared.
机译:本文提出了一种非欧氏关系数据和不定核数据的熵正则化模糊聚类方法。这很重要,因为关系数据和内核数据并不总是分别为欧几里得和正半定数。从理论上确定,可以对非欧几里得关系数据和不定核数据使用熵正则化方法,而无需使用β扩展变换,并且另外两个选项使两种数据类型的聚类结果变得清晰。这些结果与标准方法的结果相反。通过数值实验验证了理论结果,并比较了三种针对非欧氏关系数据的熵正则化方法和三种针对不确定核数据的熵正则化方法的聚类精度。

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