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Impact of message fatigue in information-disease coupled dynamics on temporal simplicial networks

During information diffusion, individuals typically experience fatigue and mental exhaustion due to repeated exposure to similar information, which is a state called message fatigue. To address message fatigue in information diffusion and group interactions, we developed a novel coupled information-...

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Bibliographic Details
Published in:Applied mathematics and computation 2024-10, Vol.479, p.128879, Article 128879
Main Authors: You, Xuemei, Fan, Xiaonan, Ma, Yinghong, Liu, Zhiyuan, Zhang, Ruifeng
Format: Article
Language:English
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Summary:During information diffusion, individuals typically experience fatigue and mental exhaustion due to repeated exposure to similar information, which is a state called message fatigue. To address message fatigue in information diffusion and group interactions, we developed a novel coupled information-disease spreading model within the framework of multiplex temporal networks. Here, the information network simulates the process of disease-related information diffusion using a temporal simplicial network. Furthermore, we utilize a threshold model to characterize the effects of message fatigue. We describe the dynamic evolutionary equations of the model by the microscopic Markov chain (MMC) approach to determine the epidemic threshold. We also validated the proposed model using a number of Monte Carlo (MC) simulations. The experimental results of the MC simulations and MMC theoretical results are in good agreement. Our research has shown that message fatigue can lead to a two-stage change in the information-disease coupled spreading. Raising the threshold for message fatigue and preventing a large number of individuals from experiencing it can help inhibit the disease spreading. In short, excessive publicizing of related-disease information can backfire. The results can facilitate us to accurately capture the spreading characteristics of real-world diseases. •A two-layer temporal network model coupled information diffusion with disease spread through message fatigue is proposed.•Based simplicial activity-driven network, incorporating higher-order group interactions in the information layers.•A computational approach to quantify message fatigue is developed.•The evolution equation is described by the microscopic Markov chain approach and the epidemic threshold is derived.•Due to the message fatigue, the process of information diffusion and disease spreading presents a two-stage change.
ISSN:0096-3003
1873-5649
DOI:10.1016/j.amc.2024.128879