Evaluation Metrics for Overlapping Community Detection

S. E. Ayeb, B. Hemery, Fabrice Jeanne, E. Cherrier, Christophe Charrier
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Abstract

Networks have provided a representation for a wide range of real systems, including communication flow, money transfer or biological systems, to mention just a few. Communities represent fundamental structures for understanding the organization of real-world networks. Uncovering coherent groups in these networks is the goal of community detection. A community is a mesoscopic structure with nodes heavily connected within their groups by comparison to the nodes in other groups. Communities might also overlap as they may share one or multiple nodes. Evaluating the results of a community detection algorithm is an equally important task. This paper introduces metrics for evaluating overlapping community detection. The idea of introducing new metrics comes from the lack of efficiency and adequacy of state-of-the-art metrics for overlapping communities. The new metrics are tested both on simulated data and standard datasets and are compared with existing metrics.
重叠社区检测的评价指标
网络为广泛的真实系统提供了一种表示,包括通信流、资金转移或生物系统,仅举几例。社区代表了理解现实世界网络组织的基本结构。在这些网络中发现一致的群体是社区检测的目标。社区是一种介观结构,与其他组中的节点相比,其组内的节点紧密相连。社区也可能重叠,因为它们可能共享一个或多个节点。评估社区检测算法的结果也是一项同样重要的任务。本文介绍了评估重叠社区检测的指标。引入新度量标准的想法来自于缺乏效率和对重叠社区的最先进的度量标准的充分性。在模拟数据和标准数据集上对新指标进行了测试,并与现有指标进行了比较。
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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