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A Novel Centrality of Influential Nodes Identification in Complex Networks

Yuanzhi Yang, Xing Wang, You Chen, Min Hu, Chengwei Ruan

2020IEEE Access56 citationsDOIOpen Access PDF

Abstract

Influential nodes identification in complex networks is vital for understanding and controlling the propagation process in complex networks. Some existing centrality measures ignore the impacts of neighbor node. It is well-known that degree is a famous centrality measure for influential nodes identification, and the contributions of neighbors also should be taken into consideration. Furthermore, topological connections among neighbors will affect nodes' spreading ability, that is, the denser the connections among neighbors, the greater the chance of infection. In this paper, we propose a novel centrality, called DCC, to identify influential nodes by comprehensively considering degree and clustering coefficient as well as neighbors. The weights of degree and clustering coefficient are calculated by entropy technology. To verify the feasibility and effectiveness of DCC, the comparisons between DCC and other centrality measures in four aspects are conducted based on four real networks. The experimental results demonstrate that DCC is more effective in identifying influential nodes.

Topics & Concepts

CentralityComputer scienceClustering coefficientEntropy (arrow of time)Identification (biology)Cluster analysisNode (physics)Complex networkDegree (music)Katz centralityData miningNetwork scienceTheoretical computer scienceTopology (electrical circuits)Artificial intelligenceMathematicsStatisticsCombinatoricsPhysicsBotanyQuantum mechanicsAcousticsStructural engineeringEngineeringWorld Wide WebBiologyComplex Network Analysis TechniquesOpinion Dynamics and Social InfluenceMental Health Research Topics