4.7 Article

Stable Community Detection in Signed Social Networks

Journal

IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING
Volume 34, Issue 10, Pages 5051-5055

Publisher

IEEE COMPUTER SOC
DOI: 10.1109/TKDE.2020.3047224

Keywords

Signed graph; k-core; balanced triangle

Funding

  1. ZJNSF [LQ20F020007]
  2. [NSFC61802345]

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This paper addresses the problem of community detection in social networks, specifically considering signed graphs. The proposed stable k-core model measures the stability of a community by considering both user engagement and eliminating unstable structures. The paper also introduces novel pruning strategies and searching methods to handle large graphs.
Community detection is one of the most fundamental problems in social network analysis, while most existing research focuses on unsigned graphs. In real applications, social networks involve not only positive relationships but also negative ones. It is important to exploit the signed information to identify more stable communities. In this paper, we propose a novel model, named stable k-core, to measure the stability of a community in signed graphs. The stable k-core model not only emphasizes user engagement, but also eliminates unstable structures. We show that the problem of finding the maximum stable k-core is NP-hard. To scale for large graphs, novel pruning strategies and searching methods are proposed. We conduct extensive experiments on 6 real-world signed networks to verify the efficiency and effectiveness of proposed model and techniques.

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