Abstract
In studies of information-epidemic coevolution on higher-order networks, a key question is how information diffusion in information models with higher-order interactions influences epidemic dynamics. However, existing research has largely overlooked the role of self-awareness, resulting in incomplete analysis of phenomena. Here, we investigate how oscillatory behavior arising in information models with higher-order interactions affects epidemic dynamics. We show that self-awareness acts as an external input that prevents the information layer from falling into an absorbing state, thereby enabling oscillations to appear in simulations. Increasing self-awareness drives the system’s order parameters from periodic to damped oscillations, and within the periodic regime, self-awareness exerts a double-edged effect on the average epidemic prevalence. Dynamical correlations further suppress oscillations in static information networks relative to annealed ones. Most importantly, in the study of information-epidemic dynamics on higher-order networks, our results emphasize that self-awareness can alter the phase-transition type of the information-layer order parameter. Moreover, its coupling with higher-order interactions generates additional novel dynamical behaviors. Our research may readily be extended to a broader field, rather than the network epidemiology in this paper.
| Original language | English |
|---|---|
| Article number | 623 |
| Journal | Nonlinear Dynamics |
| Volume | 114 |
| Issue number | 9 |
| DOIs | |
| State | Published - May 2026 |
Keywords
- Higher-order interactions
- Information-epidemic dynamics
- Multiplex networks
- Self-awareness
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