The spreading of an infectious disease can trigger human behavior responses to the disease, which in turn plays a crucial role on the spreading of epidemic. In this study, to illustrate the impacts of the human behavioral responses, a new class of individuals, SF, is introduced to the classical susceptible-infected-recovered model. In the model, SF state represents that susceptible individuals who take self-initiate protective measures to lower the probability of being infected, and a susceptible individual may go to SF state with a response rate when contacting an infectious neighbor. Via the percolation method, the theoretical formulas for the epidemic threshold as well as the prevalence of epidemic are derived. Our finding indicates that, with the increasing of the response rate, the epidemic threshold is enhanced and the prevalence of epidemic is reduced. The analytical results are also verified by the numerical simulations. In addition, we demonstrate that, because the mean field method neglects the dynamic correlations, a wrong result based on the mean field method is obtained-the epidemic threshold is not related to the response rate, i.e., the additional SF state has no impact on the epidemic threshold.
CITATION STYLE
Liu, C., Xie, J. R., Chen, H. S., Zhang, H. F., & Tang, M. (2015). Interplay between the local information based behavioral responses and the epidemic spreading in complex networks. Chaos, 25(10). https://doi.org/10.1063/1.4931032
Mendeley helps you to discover research relevant for your work.