Estimating the epidemic threshold under individual vaccination behaviour and adaptive social connections: A game-theoretic complex network model
Viney Kumar, Chris T Bauch, Samit Bhattacharyya

TL;DR
This paper models disease spread considering adaptive social networks and individual vaccination decisions, revealing how social dynamics influence epidemic thresholds and vaccine uptake.
Contribution
It introduces an integrated behavior-prevalence model on an adaptive multiplex network, analytically deriving epidemic thresholds considering social and vaccination behaviors.
Findings
Adaptive social contacts increase epidemic threshold.
Network topology affects infection spread.
Higher perceived infection risk boosts vaccine uptake.
Abstract
Information dissemination intricately intertwines with the dynamics of infectious diseases in the contemporary interconnected world. Recognizing the critical role of public awareness, individual vaccination choices appear to be an essential factor in collective efforts against emerging health threats. This study aims to characterize disease transmission dynamics under evolving social connections, information sharing, and individual vaccination decisions. To address this important problem, we present an integrated behaviour-prevalence model on an adaptive multiplex network. While the physical layer (layer-II) focuses on disease transmission under vaccination, the virtual layer (layer-I), representing individuals' social contacts, is adaptive and deals with information dissemination, resulting in the dynamics of vaccination choice in a socially influenced environment. Utilizing the…
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Taxonomy
TopicsCOVID-19 epidemiological studies · Opinion Dynamics and Social Influence · Mental Health Research Topics
