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A kernel k-means clustering method for symbolic interval data

机译:符号区间数据的核k均值聚类方法

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Kernel k-means algorithms have recently been shown to perform better than conventional k-means algorithms in unsupervised classification. In this paper we present is an extension of kernel k-means clustering algorithm for symbolic interval data. To evaluate this method, experiments with synthetic and real interval data sets were performed and we have been compared our method with a dynamic clustering algorithm with adaptive distance. The evaluation is based on an external cluster validity index (corrected Rand index) and the overall error rate of classification (OERC). These experiments showed the usefulness of the proposed method and the results indicate that kernel clustering algorithm gives markedly better performance on data sets considered.
机译:最近,在无监督分类中,内核k均值算法表现出比常规k均值算法更好的性能。在本文中,我们提出了一种针对符号间隔数据的内核k均值聚类算法的扩展。为了评估此方法,我们对合成和实际间隔数据集进行了实验,并将我们的方法与具有自适应距离的动态聚类算法进行了比较。评估基于外部聚类有效性指数(校正的兰德指数)和总分类错误率(OERC)。这些实验表明了该方法的有效性,结果表明,内核聚类算法在考虑的数据集上具有明显更好的性能。

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