Abstract

Local overlapping community detection (LOCD), which aims to discover the multiple communities containing a given starting node, becomes a hot research problem in community detection area. However, existing LOCD methods only consider the quality of each local community containing the starting node, while ignoring the information between the multiple local communities. To this end, in this paper, we first formulate a novel multi-objective model to better assess the quality of local overlapping communities, where two novel objectives are suggested by fully utilizing the information within and between the multiple local communities. Afterward, we propose a tri-division representation-based multi-objective evolutionary algorithm (TDR-MOEA) for effectively finding multiple local overlapping communities for a given node under the formulated multi-objective model. In TDR-MOEA, a tri-division individual representation scheme is designed to effectively encode and decode the local overlapping communities. Based on the representation, two novel crossover and mutation operators are then suggested. In addition, an effective population initialization strategy is designed to obtain an initial population with better diversity and convergence. The effectiveness of the proposed multi-objective model and TDR-MOEA is verified on several synthetic networks and real-world networks. The experimental results show that TDR-MOEA is superior to state-of-the-art algorithms for solving LOCD.

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