Stochastic Epidemic Networks with Strategic Link Formation
Jie Xu

TL;DR
This paper models epidemic spread in networks where agents strategically form links, revealing that epidemics persist regardless of spreading rate and highlighting the importance of considering agent behavior for effective security strategies.
Contribution
It introduces a game-theoretic framework for stochastic epidemic networks with strategic link formation, showing persistent epidemics and altered optimal protection mechanisms.
Findings
Epidemics never die out with strategic agents, regardless of spreading rate.
Strategic behavior reduces system efficiency and alters optimal security strategies.
Understanding agent strategies is crucial for effective epidemic control.
Abstract
Understanding cascading failures or epidemics in networks is crucial for developing effective defensive mechanisms for many critical systems and infrastructures (e.g. biological, social and cyber networks). Most of the existing works treat the network topology as being exogenously given and study under what conditions an epidemic breaks out and/or extinguishes. However, if agents are able to strategically decide their connections according to their own self-interest, the network will instead be endogenously formed and evolving. In such systems, the epidemic, agents' strategic decisions and the network structure become complexly coupled and co-evolve. As a result, existing knowledge may no longer be applicable. Built on a continuous time Susceptible-Infected-Susceptible epidemic model with strong mixing, this paper studies stochastic epidemic networks consisting of strategic agents, who…
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Taxonomy
TopicsComplex Network Analysis Techniques · Opinion Dynamics and Social Influence · Mathematical and Theoretical Epidemiology and Ecology Models
