Predicting Self-Initiated Preventive Behavior Against Epidemics with an Agent-Based Relative Agreement Model
Authored by Liang Mao
Date Published: 2015
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Abstract
Human self-initiated behavior against epidemics is recognized to have
significant impacts on disease spread. A few epidemic models have
incorporated self-initiated behavior, and most of them are based on a
classic population-based approach, which assumes a homogeneous
population and a perfect mixing pattern, thus failing to capture
heterogeneity among individuals, such as their responsive behavior to
diseases. This article proposes an agent-based model that combines
epidemic simulation with a relative agreement model for individual
self-initiated behavior. This model explicitly represents discrete
individuals, their contact structure, and most importantly, their
progressive decision making processes, thus characterizing
individualized response to disease risks. The model simulation and
sensitivity analysis show the existence of critical points (threshold
values) in the model parameter space to control influenza epidemic
including minimum values for the initially positive population size, the
communication rate, and the attitude uncertainty. These threshold
effects shed insights on preventive strategy design to deal with the
current circumstances that new vaccines are often insufficient to combat
emerging communicable diseases.
Tags
Dynamics
Pandemic influenza
Infectious-diseases
Spread
Large social network
Transmissibility