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KCK-Means: A Clustering Method Based on Kernel Canonical Correlation Analysis

机译:KCK-Means:基于核典范相关分析的聚类方法

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Kernel Canonical Correlation Analysis (KCCA) is a technique that can extract common features from a pair of multivariate data, which may assist in mining the ground truth hidden in the data. In this paper, a novel partitioning clustering method called KCK-means is proposed based on KCCA. We also show that KCK-means can not only be run on two-view data sets, but also it performs excellently on single-view data sets. KCK-means can deal with both binary-class and multi-class clustering tasks very well. Experiments with three evaluation metrics are also presented, the results of which reflect the promising performance of KCK-means.
机译:核规范相关分析(KCC)是一种可以从一对多元数据中提取共同特征的技术,它可以帮助挖掘隐藏在数据中的地面真实性。本文提出了一种基于KCCA的新型分区聚类方法KCK-means。我们还表明,KCK-means不仅可以在两视图数据集上运行,而且在单视图数据集上也能表现出色。 KCK-means可以很好地处理二进制类和多类群集任务。还提出了使用三个评估指标的实验,其结果反映了KCK-means的有前途的性能。

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