Author/Authors :
Pipatsart, Navavat Department of Physics - Faculty of Science - Mahidol University - Bangkok, Thailand , Triampo, Wannapong Department of Physics - Faculty of Science - Mahidol University - Bangkok, Thailand , Modchang, Charin Department of Physics - Faculty of Science - Mahidol University - Bangkok, Thailand
Abstract :
We presented adaptive random network models to describe human behavioral change during epidemics and performed stochastic
simulations of SIR (susceptible-infectious-recovered) epidemic models on adaptive random networks. The interplay between
infectious disease dynamics and network adaptation dynamics was investigated in regard to the disease transmission and the
cumulative number of infection cases. We found that the cumulative case was reduced and associated with an increasing network
adaptation probability but was increased with an increasing disease transmission probability. It was found that the topological
changes of the adaptive random networks were able to reduce the cumulative number of infections and also to delay the epidemic
peak. Our results also suggest the existence of a critical value for the ratio of disease transmission and adaptation probabilities below
which the epidemic cannot occur.