U.S. Naval Research Laboratory, Code 6792, Plasma Physics Division, Nonlinear Systems Dynamics Section, Washington, DC 20375, USA.
Phys Rev E. 2017 May;95(5-1):052317. doi: 10.1103/PhysRevE.95.052317. Epub 2017 May 25.
We study the extinction of long-lived epidemics on finite complex networks induced by intrinsic noise. Applying analytical techniques to the stochastic susceptible-infected-susceptible model, we predict the distribution of large fluctuations, the most probable or optimal path through a network that leads to a disease-free state from an endemic state, and the average extinction time in general configurations. Our predictions agree with Monte Carlo simulations on several networks, including synthetic weighted and degree-distributed networks with degree correlations, and an empirical high school contact network. In addition, our approach quantifies characteristic scaling patterns for the optimal path and distribution of large fluctuations, both near and away from the epidemic threshold, in networks with heterogeneous eigenvector centrality and degree distributions.
我们研究了有限复杂网络中由固有噪声引起的长寿命传染病的灭绝。通过对随机易感感染易感染模型应用分析技术,我们预测了大波动的分布、从流行状态到无病状态的最可能或最佳路径以及一般情况下的平均灭绝时间。我们的预测与几种网络上的蒙特卡罗模拟结果一致,包括具有度相关性的合成加权和度分布网络,以及一个经验丰富的高中接触网络。此外,我们的方法还量化了在具有异质特征向量中心度和度分布的网络中,大波动的最优路径和分布的特征标度模式,无论是在传染病阈值附近还是远离传染病阈值。