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動的二モードネットワーク分析×時間的コミュニティ検出×
分野ネットワーク分析ネットワーク分析
系統Machine learningMachine learning
提唱年2000s–20122010
提唱者Borgatti, S. P. & Halgin, D. S. (affiliation networks); Holme, P. & Saramäki, J. (temporal networks)Mucha, P. J. et al.
種類Longitudinal bipartite network analysisNetwork clustering algorithm
原典Borgatti, S. P., & Halgin, D. S. (2011). Analyzing affiliation networks. In J. Scott & P. J. Carrington (Eds.), The SAGE Handbook of Social Network Analysis (pp. 417–433). SAGE. link ↗Mucha, P. J., Richardson, T., Macon, K., Porter, M. A., & Onnela, J.-P. (2010). Community structure in time-dependent, multiscale, and multiplex networks. Science, 328(5980), 876–878. DOI ↗
別名Dynamic bipartite network analysis, Temporal two-mode network analysis, Longitudinal affiliation network analysis, Dynamic actor-event network analysisdynamic community detection, time-varying community detection, evolutionary community detection, longitudinal community detection
関連66
概要Dynamic two-mode network analysis studies bipartite networks — structures with two distinct node types, such as actors and events or authors and papers — as they evolve over time. By tracking how memberships, affiliations, and co-participations change across temporal snapshots, it reveals the emergence, dissolution, and reorganization of collaborative or membership structures that static analysis would miss.Temporal community detection identifies cohesive groups (communities) in networks whose structure changes over time. By treating each time snapshot as a network layer and coupling consecutive layers, it reveals how communities form, merge, split, grow, or dissolve — turning a sequence of static snapshots into a continuous narrative of group evolution.
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ScholarGate手法を比較: Dynamic Two-Mode Network Analysis · Temporal Community Detection. 2026-06-17に以下より取得 https://scholargate.app/ja/compare