Accurate and Efficient Distributed COVID-19 Spread Prediction based on a Large-Scale Time-Varying People Mobility Graph

S. Shubha, Shohaib Mahmud, Haiying Shen, Geoffrey Fox, M. Marathe
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Abstract

Compared to previous epidemics, COVID-19 spreads much faster in people gatherings. Thus, we need not only more accurate epidemic spread prediction considering the people gatherings but also more time-efficient prediction for taking actions (e.g., allocating medical equipments) in time. Motivated by this, we analyzed a time-varying people mobility graph of the United States (US) for one year and the effectiveness of previous methods in handling time-varying graphs. We identified several factors that influence COVID-19 spread and observed that some graph changes are transient, which degrades the effectiveness of the previous graph repartitioning and replication methods in distributed graph processing since they generate more time overhead than saved time. Based on the analysis, we propose an accurate and time-efficient Distributed Epidemic Spread Prediction system (DESP). First, DESP incorporates the factors into a previous prediction model to increase the prediction accuracy. Second, DESP conducts repartitioning and replication only when a graph change is stable for a certain time period (predicted using machine learning) to ensure the operation improves time-efficiency. We conducted extensive experiments on Amazon AWS based on real people movement datasets. Experimental results show DESP reduces communication time by up to 52%, while enhancing accuracy by up to 24% compared to existing methods.
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基于大尺度时变人口流动图的COVID-19准确高效分布式传播预测
与以往的疫情相比,COVID-19在人群聚集中传播得快得多。因此,我们不仅需要更准确地预测人群聚集的疫情传播,还需要更高效的预测,以便及时采取行动(如分配医疗设备)。受此启发,我们分析了美国一年的时变人口流动图,以及之前处理时变图表的方法的有效性。我们确定了影响COVID-19传播的几个因素,并观察到一些图的变化是短暂的,这降低了以前的图重分区和复制方法在分布式图处理中的有效性,因为它们产生的时间开销大于节省的时间。在此基础上,提出了一种准确、高效的分布式疫情传播预测系统(DESP)。首先,DESP将这些因素纳入到先前的预测模型中,以提高预测精度。其次,DESP仅在图变化在一定时间内稳定(使用机器学习预测)时才进行重分区和复制,以确保操作提高时间效率。我们在亚马逊AWS上基于真实的人的运动数据集进行了大量的实验。实验结果表明,与现有方法相比,DESP减少了52%的通信时间,同时提高了24%的精度。
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