Effects of vaccine-hesitation on an epidemic: Simulations and meanfield studies of an agent based stochastic model
POSTER
Abstract
An elementary model of epidemics (the SIS model) consists of two subgroups in a population: the susceptible (S) and the infected (I), with rates for infection (η) and recovery (γ), showing a transition to a long-term, endemic state when γ/β≤1. In the spirit of the SIR model [Kermack and McKendrick, Proc. R. Soc. A115, 700 (1927)], we introduce a subgroup who takes vaccines (V ) as well as a time-dependent probability of acceptance (α). The evolution of α is based on a simple model of game theory, in which taking the vaccine or getting infected are treated as a "gamble" with risks. Using Monte Carlo techniques, we simulate populations evolving stochastically with N≤100000 individuals. Modeling a typical outbreak (from a small number of I's and V = 0), we find a variety of the epidemic's progression, including monotonic and oscillatory approaches to different steady endemic states. The mean-field equations for our simple model are quite successful in predicting the average behavior of the stochastic system, finding transitions between different phases in the system where the mean-field solutions go from stable to unstable, and boundary conditions for the absorbing state (I→0).
Publication: N/A
Presenters
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Hedda A Grelz
Department of Physics and Texas Center for Superconductivity, University of Houston
Authors
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Hedda A Grelz
Department of Physics and Texas Center for Superconductivity, University of Houston
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Kevin E Bassler
Department of Physics and Texas Center for Superconductivity, University of Houston, Department of Physics, University of Houston and Texas Center for Superconductivity, University of Houston
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R.K.P. Zia
Center for Soft Matter and Biological Physics, Department of Physics, Virginia Tech, and Department of Physics, University of Houston, Department of Physics, University of Houston and Department of Physics, Virginia Tech