2000 character limit reached
Locating influential nodes via dynamics-sensitive centrality (1504.06672v1)
Published 25 Apr 2015 in cs.SI, physics.data-an, and physics.soc-ph
Abstract: With great theoretical and practical significance, locating influential nodes of complex networks is a promising issues. In this paper, we propose a dynamics-sensitive (DS) centrality that integrates topological features and dynamical properties. The DS centrality can be directly applied in locating influential spreaders. According to the empirical results on four real networks for both susceptible-infected-recovered (SIR) and susceptible-infected (SI) spreading models, the DS centrality is much more accurate than degree, $k$-shell index and eigenvector centrality.
- Jian-Hong Lin (7 papers)
- Qiang Guo (32 papers)
- Jian-Guo Liu (153 papers)
- Tao Zhou (398 papers)