Estrada Ernesto, Kalala-Mutombo Franck, Valverde-Colmeiro Alba
Department of Mathematics and Statistics, University of Strathclyde, Glasgow G1 1XQ, United Kingdom.
Phys Rev E Stat Nonlin Soft Matter Phys. 2011 Sep;84(3 Pt 2):036110. doi: 10.1103/PhysRevE.84.036110. Epub 2011 Sep 16.
An "infection," understood here in a very broad sense, can be propagated through the network of social contacts among individuals. These social contacts include both "close" contacts and "casual" encounters among individuals in transport, leisure, shopping, etc. Knowing the first through the study of the social networks is not a difficult task, but having a clear picture of the network of casual contacts is a very hard problem in a society of increasing mobility. Here we assume, on the basis of several pieces of empirical evidence, that the casual contacts between two individuals are a function of their social distance in the network of close contacts. Then, we assume that we know the network of close contacts and infer the casual encounters by means of nonrandom long-range (LR) interactions determined by the social proximity of the two individuals. This approach is then implemented in a susceptible-infected-susceptible (SIS) model accounting for the spread of infections in complex networks. A parameter called "conductance" controls the feasibility of those casual encounters. In a zero conductance network only contagion through close contacts is allowed. As the conductance increases the probability of having casual encounters also increases. We show here that as the conductance parameter increases, the rate of propagation increases dramatically and the infection is less likely to die out. This increment is particularly marked in networks with scale-free degree distributions, where infections easily become epidemics. Our model provides a general framework for studying epidemic spreading in networks with arbitrary topology with and without casual contacts accounted for by means of LR interactions.
这里所理解的“感染”,是从非常宽泛的意义上来说的,它可以通过个体间的社会接触网络进行传播。这些社会接触包括个体在交通、休闲、购物等场景中的“密切”接触和“偶然”相遇。通过研究社会网络来了解前者并非难事,但要清晰描绘偶然接触网络,在一个流动性日益增强的社会中却是个难题。在此,基于若干实证证据,我们假定两个个体之间的偶然接触是他们在密切接触网络中的社会距离的函数。然后,我们假定已知密切接触网络,并借助由两个个体的社会亲近度决定的非随机长程(LR)相互作用来推断偶然相遇情况。接着,这种方法在一个易感染-感染-易感染(SIS)模型中得以实现,该模型用于解释复杂网络中的感染传播。一个名为“传导率”的参数控制着那些偶然相遇的可能性。在零传导率网络中,只允许通过密切接触进行传染。随着传导率增加,发生偶然相遇的概率也会增加。我们在此表明,随着传导率参数增加,传播速率会急剧上升,感染消亡的可能性降低。这种增加在具有无标度度分布的网络中尤为显著,在这类网络中感染很容易演变成流行病。我们的模型提供了一个通用框架,用于研究具有任意拓扑结构的网络中的流行病传播,无论是否考虑通过LR相互作用进行的偶然接触。