The behavior of epidemics under bounded susceptibility

Subhashini Krishnasamy, Siddhartha Banerjee, S. Shakkottai
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引用次数: 8

Abstract

We investigate the sensitivity of epidemic behavior to a bounded susceptibility constraint -- susceptible nodes are infected by their neighbors via the regular SI/SIS dynamics, but subject to a cap on the infection rate. Such a constraint is motivated by modern social networks, wherein messages are broadcast to all neighbors, but attention spans are limited. Bounded susceptibility also arises in distributed computing applications with download bandwidth constraints, and in human epidemics under quarantine policies. Network epidemics have been extensively studied in literature; prior work characterizes the graph structures required to ensure fast spreading under the SI dynamics, and long lifetime under the SIS dynamics. In particular, these conditions turn out to be meaningful for two classes of networks of practical relevance -- dense, uniform (i.e., clique-like) graphs, and sparse, structured (i.e., star-like) graphs. We show that bounded susceptibility has a surprising impact on epidemic behavior in these graph families. For the SI dynamics, bounded susceptibility has no effect on star-like networks, but dramatically alters the spreading time in clique-like networks. In contrast, for the SIS dynamics, clique-like networks are unaffected, but star-like networks exhibit a sharp change in extinction times under bounded susceptibility. Our findings are useful for the design of disease-resistant networks and infrastructure networks. More generally, they show that results for existing epidemic models are sensitive to modeling assumptions in non-intuitive ways, and suggest caution in directly using these as guidelines for real systems.
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传染病在有限易感性下的行为
我们研究了流行病行为对有界易感性约束的敏感性——易感节点通过规则的SI/SIS动力学被其邻居感染,但受感染率上限的限制。这种约束是由现代社交网络激发的,在社交网络中,信息被广播给所有的邻居,但注意力的持续时间是有限的。在具有下载带宽限制的分布式计算应用程序中,以及在隔离策略下的人类流行病中,也会出现有限的易感性。网络流行病在文献中得到了广泛的研究;先前的工作描述了确保在SI动态下快速扩展和在SIS动态下长寿命所需的图结构。特别是,这些条件对于两类实际相关的网络是有意义的——密集的,均匀的(即,团状的)图,和稀疏的,结构化的(即,星形的)图。我们表明,在这些图族中,有界易感性对流行病行为具有惊人的影响。对于SI动力学,有界磁化率对星形网络没有影响,但极大地改变了团状网络的扩散时间。相比之下,对于SIS动力学,团状网络不受影响,但星形网络在有限磁化率下表现出急剧变化的灭绝时间。我们的发现对抗病网络和基础设施网络的设计是有用的。更一般地说,他们表明,现有流行病模型的结果对非直观方式的建模假设很敏感,并建议在直接将这些模型作为实际系统的指导方针时要谨慎。
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