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Centralitat dinàmica per vectors propis×Centralitat del vector propi×
CampAnàlisi de xarxesAnàlisi de xarxes
FamíliaMachine learningMachine learning
Any d'origen2010s1972
Autor originalLerman, K.; Ghosh, R.; Kang, J. H.Bonacich, P.
TipusCentrality measure for time-evolving networksCentrality measure
Font seminalLerman, K., Ghosh, R., & Kang, J. H. (2010). Centrality metric for dynamic networks. Proceedings of the 8th Workshop on Mining and Learning with Graphs (MLG '10). ACM. link ↗Bonacich, P. (1972). Factoring and weighting approaches to status scores and clique identification. Journal of Mathematical Sociology, 2(1), 113–120. DOI ↗
Àliestemporal eigenvector centrality, time-varying eigenvector centrality, dynamic EC, evolving eigenvector centralityeigenvector centrality, EC, Bonacich centrality, power centrality
Relacionats46
ResumDynamic eigenvector centrality extends the classic eigenvector centrality measure to networks that change over time. Rather than computing a single leading eigenvector on a static adjacency matrix, it tracks how a node's influence — defined by the importance of its neighbours — evolves across snapshots or time windows. The method is used in social network analysis, epidemiology, and information diffusion studies where network topology shifts continuously.Eigenvector centrality, introduced by Bonacich in 1972, measures a node's influence by considering not just how many neighbors it has, but how influential those neighbors are. A node scores highly if it is connected to other high-scoring nodes, making it a recursive, globally-aware measure of structural importance in a network.
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ScholarGateCompara mètodes: Dynamic Eigenvector Centrality · Eigenvector Centrality. Recuperat el 2026-06-15 de https://scholargate.app/ca/compare