论文标题
使用图信号变化识别有影响力的大流行区域
Identifying Influential Pandemic Regions Using Graph Signal Variation
论文作者
论文摘要
开发分析感染扩散的方法是研究大流行并包含它们的重要步骤。大流行地理扩散的主要模式是人口跨地区的运动。我们有兴趣识别有影响力的地区(城市,州或国家)积极地将疾病传播到邻近地区。我们考虑具有SIR(易感性感染)动力学的元群体网络,并开发基于图的信号指标以识别影响区域。具体而言,提出了局部变化和时间局部变化度量。模拟表明局部变异指标与基于全局图的处理(例如过滤)的有用性。
Developing methods to analyse infection spread is an important step in the study of pandemic and containing them. The principal mode for geographical spreading of pandemics is the movement of population across regions. We are interested in identifying regions (cities, states, or countries) which are influential in aggressively spreading the disease to neighboring regions. We consider a meta-population network with SIR (Susceptible-Infected-Recovered) dynamics and develop graph signal-based metrics to identify influential regions. Specifically, a local variation and a temporal local variation metric is proposed. Simulations indicate usefulness of the local variation metrics over the global graph-based processing such as filtering.