Recent Approaches of Partitioning a Set into Overlapping Clusters, Distance Metrics and Evaluation Measures

Gursimran Pal, Sahil Kakkar
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Abstract

This paper reviews recently proposed overlapping co-clustering approaches and related evaluation measures. An overlap captures multiple views of the partitions in data set, hence is more expressive than traditional flat partitioning approaches. We present a graph-theoretic formulation of co-clustering which allows nodes to possess multiple memberships and hence finds usage in diverse applications like text mining, web mining, collaborative filtering and community detection. We also study proposed quality measures specifically adjusted to overlapping scenarios.particular subject.
一种集划分为重叠簇的新方法、距离度量和评价测度
本文综述了近年来提出的重叠共聚类方法及其评价指标。重叠捕获数据集中分区的多个视图,因此比传统的平面分区方法更具表现力。我们提出了一种图论的共聚类公式,它允许节点拥有多个成员,因此在文本挖掘、web挖掘、协同过滤和社区检测等多种应用中得到使用。我们还研究了针对重叠场景调整的质量措施。特定的主题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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