论文标题
SIS疾病灭绝模型在异质定向人口网络上
SIS model of disease extinction on heterogeneous directed population networks
论文作者
论文摘要
了解疾病通过复杂网络的传播是引起人们的极大兴趣,而现实的,异质的接触模式在传播中起着至关重要的作用。大多数作品都集中在平均场上行为上 - 量化接触模式如何影响(元)稳定流行状态在网络中的出现和稳定性。另一方面,对更长的时间尺度动态(例如疾病灭绝)的了解少得多,疾病的灭绝,固有的过程随机性和接触异质性相互作用以产生大量波动,从而导致自发的感染清除率。在这里,我们表明,易感性和感染性的异质性(分别传入和外向程度)对有向接触网络中的灭绝具有无处不在的影响,这在网络中这种边缘的相对比例均具有加速和减速的灭绝率,以及在网络中的相对比例,以及在不合时宜的和外观上是否具有抗抗性和外观。特别是,我们表明弱的反相关异质性可以提高疾病的稳定性,而强的异质性产生的相关和反相关的异质网络的结果明显不同。通过包括网络蒙特卡洛模拟在内的各种数值方案,所有分析结果均得到证实。
Understanding the spread of diseases through complex networks is of great interest where realistic, heterogeneous contact patterns play a crucial role in the spread. Most works have focused on mean-field behavior -- quantifying how contact patterns affect the emergence and stability of (meta)stable endemic states in networks. On the other hand, much less is known about longer time scale dynamics, such as disease extinction, whereby inherent process stochasticity and contact heterogeneity interact to produce large fluctuations that result in the spontaneous clearance of infection. Here we show that heterogeneity in both susceptibility and infectiousness (incoming and outgoing degree, respectively) has a non-trivial effect on extinction in directed contact networks, both speeding-up and slowing-down extinction rates depending on the relative proportion of such edges in a network, and on whether the heterogeneities in the incoming and outgoing degrees are correlated or anticorrelated. In particular, we show that weak anticorrelated heterogeneity can increase the disease stability, whereas strong heterogeneity gives rise to markedly different results for correlated and anticorrelated heterogeneous networks. All analytical results are corroborated through various numerical schemes including network Monte-Carlo simulations.