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논문

Multiscale ensemble clustering for finding modules in complex networks

https://doi.org/10.1103/PhysRevE.85.026119

  • 저자Eun-Youn Kim, Dong-Uk Hwang, and Tae-Wook Ko
  • 학술지PHYSICAL REVIEW E 85
  • 등재유형
  • 게재일자(2012)


The identification of modules in complex networks is important for the understanding of systems. Here, we propose an ensemble clustering method incorporating node groupings in various sizes and the sequential removal of weak ties between nodes which are rarely grouped together. This method successfully detects modules in various networks, such as hierarchical random networks and the American college football network, with known modular structures. Some of the results are compared with those obtained by modularity optimization and K -means clustering.


The identification of modules in complex networks is important for the understanding of systems. Here, we propose an ensemble clustering method incorporating node groupings in various sizes and the sequential removal of weak ties between nodes which are rarely grouped together. This method successfully detects modules in various networks, such as hierarchical random networks and the American college football network, with known modular structures. Some of the results are compared with those obtained by modularity optimization and K -means clustering.

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