论文标题
归因网络嵌入模型,用于暴露covid-19的传播轨迹原型
Attributed Network Embedding Model for Exposing COVID-19 Spread Trajectory Archetypes
论文作者
论文摘要
COVID-19的传播表明,在不同城市和社区之间,传播风险模式不是同质的,各种异质特征会影响传播轨迹。因此,对于预测性大流行监测,必须在城市和社区中探索潜在的异质特征,以区分其特定的大流行扩散轨迹。为此,这项研究创建了一个网络嵌入模型,捕获跨县的访问网络以及异质特征,以根据其大流行传播轨迹来发现美国县的集群。我们从3月3日至2020年6月29日(初始浪潮)收集并计算了2,787个县的位置智能特征。其次,我们构建了一个人类访问网络,该网络将县特征作为节点属性融合在一起,并在县之间作为网络边缘访问。我们的归因网络嵌入方法整合了跨县访问网络的类型学特征以及异质性特征。我们对归因网络嵌入的聚类分析进行了聚类分析,以揭示与四个县群相对应的差异风险轨迹的四种原型。随后,我们确定了四个特征是原型之间独特的传输风险模式的重要特征。归因的网络嵌入方法和发现识别并解释了整个县的非殖民性大流行风险轨迹进行预测性大流行监测。这项研究还为大流行分析的基于数据驱动和深度学习的方法有助于补充大流行病政策分析的标准流行病学模型。
The spread of COVID-19 revealed that transmission risk patterns are not homogenous across different cities and communities, and various heterogeneous features can influence the spread trajectories. Hence, for predictive pandemic monitoring, it is essential to explore latent heterogeneous features in cities and communities that distinguish their specific pandemic spread trajectories. To this end, this study creates a network embedding model capturing cross-county visitation networks, as well as heterogeneous features to uncover clusters of counties in the United States based on their pandemic spread transmission trajectories. We collected and computed location intelligence features from 2,787 counties from March 3 to June 29, 2020 (initial wave). Second, we constructed a human visitation network, which incorporated county features as node attributes, and visits between counties as network edges. Our attributed network embeddings approach integrates both typological characteristics of the cross-county visitation network, as well as heterogeneous features. We conducted clustering analysis on the attributed network embeddings to reveal four archetypes of spread risk trajectories corresponding to four clusters of counties. Subsequently, we identified four features as important features underlying the distinctive transmission risk patterns among the archetypes. The attributed network embedding approach and the findings identify and explain the non-homogenous pandemic risk trajectories across counties for predictive pandemic monitoring. The study also contributes to data-driven and deep learning-based approaches for pandemic analytics to complement the standard epidemiological models for policy analysis in pandemics.