Emergence of nonlinear crossover under epidemic dynamics in heterogeneous networks

Zhen Su, Chao Gao, Jiming Liu, Tao Jia, Zhen Wang, and Jürgen Kurths
Phys. Rev. E 102, 052311 – Published 20 November 2020
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Abstract

Potential diffusion processes of real-world systems are relevant to the underlying network structure and dynamical mechanisms. The vast majority of the existing work on spreading dynamics, in response to a large-scale network, is built on the condition of the infinite initial state, i.e., the extremely small seed size. The impact of an increasing seed size on the persistent diffusion has been less investigated. Based on classical epidemic models, this paper offers a framework for studying such impact through observing a crossover phenomenon in a two-diffusion-process dynamical system. The two diffusion processes are triggered by nodes with a high and low centrality, respectively. Specifically, given a finite initial state in networks with scale-free degree distributions, we demonstrate analytically and numerically that the diffusion process triggered by low centrality nodes pervades faster than that triggered by high centrality nodes from a certain point. The presence of the crossover phenomenon reveals that the dynamical process under the finite initial state is far more than the vertical scaling of the spreading curve under an infinite initial state. Further discussion emphasizes the persistent infection of individuals in epidemic dynamics as the essential reason rooted in the crossover, while the finite initial state is the catalyst directly leading to the emergence of this phenomenon. Our results provide valuable implications for studying the diversity of hidden dynamics on heterogeneous networks.

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  • Received 15 August 2020
  • Accepted 28 October 2020

DOI:https://doi.org/10.1103/PhysRevE.102.052311

©2020 American Physical Society

Physics Subject Headings (PhySH)

Nonlinear DynamicsNetworksStatistical Physics & Thermodynamics

Authors & Affiliations

Zhen Su1,2,3, Chao Gao1,3,*, Jiming Liu4, Tao Jia3, Zhen Wang1, and Jürgen Kurths2,5,6

  • 1The Center for OPTical IMagery Analysis and Learning (OPTIMAL), Northwestern Polytechnical University, Xian 710072, China
  • 2The Potsdam Institute for Climate Impact Research (PIK), Potsdam 11473, Germany
  • 3College of Computer and Information Science, Southwest University, Chongqing 400715, China
  • 4Department of Computer Science, Hong Kong Baptist University, Kowloon Tong, Hong Kong
  • 5The Institute of Physics, Humboldt University of Berlin, Berlin 12489, Germany
  • 6Nizhny Novgorod State University, Nizhny Novgorod, Russia

  • *Corresponding author: cgao@swu.edu.cn

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Issue

Vol. 102, Iss. 5 — November 2020

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