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The Nuclear Clustering Algorithm of a Class of Metric Space

机译:一类度量空间的核聚类算法

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摘要

Through a number of lemma and theorems, nuclear clustering method proposed in this paper solves a class of space-metric nuclear clustering, which uses matrix elementary transformations and adopts a nonlinear mapping to extract differentiate and amplify characteristics of useful information. This method strives to avoid clustering that uses the characteristics of the sample directly. Even though the spread of the sample is uneven or the sample distribution is chaos, nuclear clustering method can achieve accurate clustering. This paper also gives the algorithm of nuclear clustering.
机译:通过许多引理和定理,本文提出的核聚类方法解决了一类空间度量核聚类,该类使用矩阵基本变换并采用非线性映射来提取有用信息的区分和放大特征。此方法努力避免直接使用样本特征的聚类。即使样本的分布不均匀或样本分布混乱,核聚类方法也可以实现准确的聚类。本文还给出了核聚类算法。

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