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SIR dynamics in random networks with heterogeneous connectivity

机译:具有异构连接的随机网络中的SIR动态

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Random networks with specified degree distributions have been proposed as realistic models of population structure, yet the problem of dynamically modeling SIR-type epidemics in random networks remains complex. I resolve this dilemma by showing how the SIR dynamics can be modeled with a system of three nonlinear ODE’s. The method makes use of the probability generating function (PGF) formalism for representing the degree distribution of a random network and makes use of network-centric quantities such as the number of edges in a well-defined category rather than node-centric quantities such as the number of infecteds or susceptibles. The PGF provides a simple means of translating between network and node-centric variables and determining the epidemic incidence at any time. The theory also provides a simple means of tracking the evolution of the degree distribution among susceptibles or infecteds. The equations are used to demonstrate the dramatic effects that the degree distribution plays on the final size of an epidemic as well as the speed with which it spreads through the population. Power law degree distributions are observed to generate an almost immediate expansion phase yet have a smaller final size compared to homogeneous degree distributions such as the Poisson. The equations are compared to stochastic simulations, which show good agreement with the theory. Finally, the dynamic equations provide an alternative way of determining the epidemic threshold where large-scale epidemics are expected to occur, and below which epidemic behavior is limited to finite-sized outbreaks.
机译:已经提出了具有特定程度分布的随机网络作为人口结构的现实模型,但是在随机网络中动态建模SIR型流行病的问题仍然很复杂。通过展示如何使用三个非线性ODE的系统来建模SIR动态,我解决了这个难题。该方法利用概率生成函数(PGF)形式表示随机网络的程度分布,并利用以网络为中心的数量(例如,定义明确的类别中的边数)而非以节点为中心的数量(例如,受感染者或易感者的数量。 PGF提供了一种在网络变量和以节点为中心的变量之间进行转换并随时确定流行病发病率的简单方法。该理论还提供了一种跟踪易感性或感染者之间程度分布演变的简单方法。这些方程式被用来证明程度分布对流行病的最终规模及其在人群中传播速度的巨大影响。与诸如泊松的均匀度分布相比,观察到幂律度分布会产生几乎立即的膨胀阶段,但最终尺寸较小。将该方程与随机仿真进行比较,这与理论吻合良好。最后,动力学方程式提供了一种确定流行阈值的替代方法,在该阈值中预计会发生大规模流行病,而在流行病阈值以下,流行病行为仅限于有限大小的爆发。

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