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Overlapping Community Detection Based on Node Importance and Adjacency Information

Ping Wang, Yonghong Huang, Fei Tang, Hongtao Liu, Yangyang Lü

2021Security and Communication Networks76 citationsDOIOpen Access PDF

Abstract

Detecting the community structure and predicting the change of community structure is an important research topic in social network research. Focusing on the importance of nodes and the importance of their neighbors and the adjacency information, this article proposes a new evaluation method of node importance. The proposed overlapping community detection algorithm (ILE) uses the random walk to select the initial community and adopts the adaptive function to expand the community. It finally optimizes the community to obtain the overlapping community. For the overlapping communities, this article analyzes the evolution of networks at different times according to the stability and differences of social networks. Seven common community evolution events are obtained. The experimental results show that our algorithm is feasible and capable of discovering overlapping communities in complex social network efficiently.

Topics & Concepts

Computer scienceAdjacency listNode (physics)Community structureData miningClique percolation methodComplex networkStability (learning theory)Social network (sociolinguistics)Data scienceFunction (biology)Adjacency matrixTheoretical computer scienceMachine learningWorld Wide WebAlgorithmSocial mediaMathematicsEngineeringGraphBiologyStructural engineeringCombinatoricsEvolutionary biologyComplex Network Analysis TechniquesOpinion Dynamics and Social InfluenceMental Health Research Topics
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