Infectious A stochastic SIR network epidemic model with preventive dropping of edges
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A stochastic SIR network epidemic model with preventive dropping of edges

机译:具有预防性边缘下降的随机SIR网络流行模型

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摘要

A Markovian Susceptible Infectious Recovered (SIR) model is considered for the spread of an epidemic on a configuration model network, in which susceptible individuals may take preventive measures by dropping edges to infectious neighbours. An effective degree formulation of the model is used in conjunction with the theory of density dependent population processes to obtain a law of large numbers and a functional central limit theorem for the epidemic as the population size N, assuming that the degrees of individuals are bounded. A central limit theorem is conjectured for the final size of the epidemic. The results are obtained for both the Molloy–Reed (in which the degrees of individuals are deterministic) and Newman–Strogatz–Watts (in which the degrees of individuals are independent and identically distributed) versions of the configuration model. The two versions yield the same limiting deterministic model but the asymptotic variances in the central limit theorems are greater in the Newman–Strogatz–Watts version. The basic reproduction number R0 and the process of susceptible individuals in the limiting deterministic model, for the model with dropping of edges, are the same as for a corresponding SIR model without dropping of edges but an increased recovery rate, though, when R0>1, the probability of a major outbreak is greater in the model with dropping of edges. The results are specialised to the model without dropping of edges to yield conjectured central limit theorems for the final size of Markovian SIR epidemics on configuration-model networks, and for the size of the giant components of those networks. The theory is illustrated by numerical studies, which demonstrate that the asymptotic approximations are good, even for moderate N.
机译:马尔可夫易感 传染性 恢复(SIR)模型被认为是一种流行病在配置模型网络上的传播,其中易感人群可以通过向感染性邻国投降来采取预防措施。该模型的有效程度公式与密度依赖的人口过程理论结合使用,以获取大数定律和该流行病的函数中心极限定理,作为人口规模 N ,假设个体的度是有界的。对于该流行病的最终规模,推测出一个中心极限定理。从配置模型的Molloy-Reed(个体程度是确定的)和Newman-Strogatz-Watts(个体程度是独立且均匀分布的)版本中都获得了结果。这两个版本产生相同的极限确定性模型,但是在Newman–Strogatz–Watts版本中,中心极限定理的渐近方差更大。基本复制编号 R < mn> 0 和极限确定性模型中易受影响个体的过程(对于边缘掉落的模型)与对应的SIR模型(边缘不掉落)相同,但是但是,当 R 0 1 ,大爆发的可能性更大在模型中具有下降的边缘。结果专门用于模型,而不会降低边沿,从而得出配置模型网络上马尔可夫SIR流行病的最终大小以及这些网络的巨型组件的大小的猜想的中心极限定理。数值研究说明了该理论,该研究表明,即使对于中等N,渐近近似也很好。

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