Asymmetrically interacting dynamics with mutual confirmation from multi-source on multiplex networks

  • Jiaxing Chen
  • , Ying Liu*
  • , Ming Tang
  • , Jing Yue
  • *Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

18 Scopus citations

Abstract

In the early stage of epidemics, individuals’ determination on adopting protective measures, which can reduce their risk of infection and suppress disease spreading, is likely to depend on multiple information sources and their mutual confirmation due to inadequate exact information. Here we introduce the inter-layer mutual confirmation mechanism into the information-disease interacting dynamics on multiplex networks. In our model, an individual increases the information transmission rate and willingness to adopt protective measures once he confirms the authenticity of news and severity of disease from neighbors’ status in multiple layers. By using the microscopic Markov chain approach, we analytically calculate the epidemic threshold and the awareness and infected density in the stationary state, which agree well with simulation results. We find that the increment of epidemic threshold when confirming the aware neighbors on communication layer is larger than that of the contact layer. On the contrary, the confirmation of neighbors’ awareness and infection from the contact layer leads to a lower final infection density and a higher awareness density than that from the communication layer. The results imply that individuals’ explicit disclosure of their infection and awareness status to neighbors, especially those with real contacts, is helpful in suppressing epidemic spreading.

Original languageEnglish
Pages (from-to)478-490
Number of pages13
JournalInformation Sciences
Volume619
DOIs
StatePublished - Jan 2023

Keywords

  • Asymmetrically interacting dynamics
  • Epidemic spreading model
  • Microscopic Markov chain
  • Multiplex network
  • Mutual confirmation mechanism

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