论文标题
通过数值分析的多重网络中谣言传播的动态流行模型
A Dynamic Epidemic Model for Rumor Spread in Multiplex Network with Numerical Analysis
论文作者
论文摘要
本文着重于研究和理解人口组成中的随机动态,当时人口受到谣言扩散。我们通过首先开发一个单个易感性暴露的诱因(ISEIR)模型来进行研究,该模型是SEIR模型的扩展,以总结人群中相互作用群体的谣言泛滥行为。使用此ISEIR模型,可以将相互作用组视为多重网络中的节点。然后,可以从多重网络的样本中汲取相互作用组的动态行为的各种属性。根据人口规模,人口分布和转移速率,基于ISEIR模型进行模拟样品。仿真研究的结果表明,对多重网络中谣言扩散的有效控制需要有效地管理信息流,这可以通过设置适当的免疫接种和在个体行为动态中扩散阈值来实现。在拟议的ISEIR模型下,我们也得出了一个稳态结果,称为“超饱和现象”,当谣言扩散过程变得平衡时,这可能有助于我们在实践中对信息流的最佳或更好地控制。
This paper focuses on studying and understanding of stochastic dynamics in population composition when the population is subject to rumor spreading. We undertake the study by first developing an individual Susceptible-Exposed-Infectious-Removed (iSEIR) model, an extension of the SEIR model, for summarizing rumor-spreading behaviors of interacting groups in the population. With this iSEIR model, the interacting groups may be regarded as nodes in a multiplex network. Then various properties of the dynamic behaviors of the interacting groups in rumor spreading can be drawn from samples of the multiplex network. The samples are simulated based on the iSEIR model with different settings in terms of population scale, population distribution and transfer rate. Results from the simulation study show that effective control of rumor spreading in the multiplex network entails an efficient management on information flow, which may be achieved by setting appropriate immunization and spreading thresholds in individual behavior dynamics. Under the proposed iSEIR model we also have derived a steady-state result, named the "supersaturation phenomenon", when the rumor spreading process becomes equilibrium, which may help us to make the optimal or better control of information flow in the practice.