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Study of Overlapping Clustering Algorithms Based on Kmeans through FBcubed Metric

机译:FBcubed度量基于Kmeans的重叠聚类算法研究

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In this paper we present a study of the overlapping clustering algorithms OKM, WOKM and OKMED, which are extensions to the overlapping case of the well known Kmeans algorithm proposed for building partitions. Different to other previously reported comparisons, in our study we compare these algorithms using the external evaluation metric FBcubed which takes into account the overlapping among clusters and we contrast our results against those obtained by F-measure, a metric that does not take into account the overlapping among clusters and that has been previously used in another reported comparison.
机译:在本文中,我们对重叠式聚类算法OKM,WOKM和OKMED进行了研究,它们是对提出的用于构建分区的著名Kmeans算法的重叠情况的扩展。与其他先前报告的比较不同,在我们的研究中,我们使用外部评估指标FBcubed比较了这些算法,该指标考虑了聚类之间的重叠,并且将我们的结果与通过F-measure获得的结果进行了对比,F-measure未考虑到集群之间的重叠,并且先前已在另一次报告的比较中使用过。

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