Towards Direct Comparison of Community Structures in Social Networks

Soumita Das, A. Biswas
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Abstract

Community detection algorithms are in general evaluated by comparing evaluation metric values for the communities obtained with different algorithms. The evaluation metrics that are used for measuring quality of the communities incorporate the topological information of entities like connectivity of the nodes within or outside the communities. However, while comparing the metric values it loses direct involvement of topological information of the communities in the comparison process. In this paper, a direct comparison approach is proposed where topological information of the communities obtained with two algorithms are compared directly. A quality measure namely Topological Variance (TV) is designed based on direct comparison of topological information of the communities. Considering the newly designed quality measure, two ranking schemes are developed. The efficacy of proposed quality metric as well as the ranking scheme is studied with eight widely used real-world datasets and six community detection algorithms.
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面向社会网络中社区结构的直接比较
社团检测算法通常通过比较不同算法得到的社团的评价度量值来评价。用于度量社区质量的评估指标包含实体的拓扑信息,如社区内外节点的连通性。然而,在比较度量值的同时,在比较过程中失去了社区拓扑信息的直接参与。本文提出了一种直接比较的方法,直接比较两种算法得到的群体拓扑信息。基于对群落拓扑信息的直接比较,设计了一种质量度量——拓扑方差(TV)。考虑到新设计的质量度量标准,提出了两种排序方案。用8个广泛使用的真实世界数据集和6种社区检测算法研究了所提出的质量度量和排序方案的有效性。
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