Herd Behaviors in Epidemics: A Dynamics-Coupled Evolutionary Games Approach
Shutian Liu, Yuhan Zhao, Quanyan Zhu

TL;DR
This paper introduces a coupled evolutionary game-theoretic model to analyze how herd behaviors and epidemic spreading influence each other, providing insights into the dynamics of infectious diseases like COVID-19.
Contribution
It extends classical epidemic models by integrating social behavior dynamics through evolutionary games on complex networks, offering a novel framework for understanding epidemic-behavior interactions.
Findings
Herd behaviors act as strategic substitutes in epidemic dynamics.
The model accurately predicts COVID-19 statistics in simulations.
The framework reveals how social activities influence disease spread.
Abstract
The recent COVID-19 pandemic has led to an increasing interest in the modeling and analysis of infectious diseases. The pandemic has made a significant impact on the way we behave and interact in our daily life. The past year has witnessed a strong interplay between human behaviors and epidemic spreading. In this paper, we propose an evolutionary game-theoretic framework to study the coupled evolutions of herd behaviors and epidemics. Our framework extends the classical degree-based mean-field epidemic model over complex networks by coupling it with the evolutionary game dynamics. The statistically equivalent individuals in a population choose their social activity intensities based on the fitness or the payoffs that depend on the state of the epidemics. Meanwhile, the spreading of the infectious disease over the complex network is reciprocally influenced by the players' social…
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Taxonomy
TopicsEvolutionary Game Theory and Cooperation · Evolution and Genetic Dynamics · COVID-19 epidemiological studies
