数据科学
复杂网络
统计物理学
人口
网络科学
复杂系统
物理
计算机科学
管理科学
相(物质)
社会学
人工智能
经济
量子力学
万维网
人口学
作者
Jessica T. Davis,Nicola Perra,Qian Zhang,Yamir Moreno,Alessandro Vespignani
出处
期刊:Nature Physics
[Nature Portfolio]
日期:2020-03-02
卷期号:16 (5): 590-596
被引量:74
标识
DOI:10.1038/s41567-020-0810-3
摘要
Mathematical models of social contagion that incorporate networks of human interactions have become increasingly popular, however, very few approaches have tackled the challenges of including complex and realistic properties of socio-technical systems. Here, we define a framework to characterize the dynamics of the Maki–Thompson rumour spreading model in structured populations, and analytically find a previously uncharacterized dynamical phase transition that separates the local and global contagion regimes. We validate our threshold prediction through extensive Monte Carlo simulations. Furthermore, we apply this framework in two real-world systems, the European commuting and transportation network and the Digital Bibliography and Library Project collaboration network. Our findings highlight the importance of the underlying population structure in understanding social contagion phenomena and have the potential to define new intervention strategies aimed at hindering or facilitating the diffusion of information in socio-technical systems. The mathematical modelling of how information spreads in social networks has latterly gained fresh urgency. A study of realistic structured populations now identifies the threshold at which the propagation of rumours becomes contagious, thereby inducing a phase transition.
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