Identifying super-spreaders in information-epidemic coevolving dynamics on multiplex networks
Qi Zeng, Ying Liu, Ming Tang, Jie Gong

TL;DR
This paper introduces a coupling-sensitive centrality measure to accurately identify super-spreaders in coupled information-disease spreading on multiplex networks, outperforming traditional methods by considering multilayer interactions.
Contribution
The study proposes a novel coupling-sensitive centrality measure that accounts for structural and dynamical couplings in multiplex networks, improving super-spreader identification.
Findings
Coupling-sensitive centrality outperforms traditional single-layer centralities.
The measure is effective on both synthetic and real-world networks.
Considering multilayer interactions is crucial for accurate super-spreader detection.
Abstract
Identifying super-spreaders in epidemics is important to suppress the spreading of disease especially when the medical resource is limited.In the modern society, the information on epidemics transmits swiftly through various communication channels which contributes much to the suppression of epidemics. Here we study on the identification of super-spreaders in the information-disease coupled spreading dynamics. Firstly, we find that the centralities in physical contact layer are no longer effective to identify super-spreaders in epidemics, which is due to the suppression effects from the information spreading. Then by considering the structural and dynamical couplings between the communication layer and physical contact layer, we propose a centrality measure called coupling-sensitive centrality to identify super-spreaders in disease spreading. Simulation results on synthesized and…
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Taxonomy
TopicsComplex Network Analysis Techniques · Opinion Dynamics and Social Influence · Mathematical and Theoretical Epidemiology and Ecology Models
