Zhang Xiaoqi, Ji Zheng, Zheng Yanqiao, Ye Xinyue, Li Dong
National School of Development, Southeast University, China.
School of Finance, Zhejiang University of Finance and Economics, China.
Cities. 2020 Dec;107:102869. doi: 10.1016/j.cities.2020.102869. Epub 2020 Aug 4.
The special epistemic characteristics of the COVID-19, such as the long incubation period and the infection through asymptomatic cases, put severe challenge to the containment of its outbreak. By the end of March 2020, China has successfully controlled the within- spreading of COVID-19 at a high cost of locking down most of its major cities, including the epicenter, Wuhan. Since the low accuracy of outbreak data before the mid of Feb. 2020 forms a major technical concern on those studies based on statistic inference from the early outbreak. We apply the supervised learning techniques to identify and train NP-Net-SIR model which turns out robust under poor data quality condition. By the trained model parameters, we analyze the connection between population flow and the cross-regional infection connection strength, based on which a set of counterfactual analysis is carried out to study the necessity of lock-down and substitutability between lock-down and the other containment measures. Our findings support the existence of non-lock-down-typed measures that can reach the same containment consequence as the lock-down, and provide useful guideline for the design of a more flexible containment strategy.
新冠病毒具有特殊的认知特征,如潜伏期长以及可通过无症状病例传播,这对控制其疫情爆发构成了严峻挑战。截至2020年3月底,中国以封锁包括疫情中心武汉在内的大部分主要城市为高昂代价,成功控制了新冠病毒在国内的传播。由于2020年2月中旬之前疫情数据的低准确性,这对基于早期疫情统计推断的研究构成了一个主要技术问题。我们应用监督学习技术来识别和训练NP-Net-SIR模型,结果表明该模型在数据质量较差的情况下具有鲁棒性。通过训练得到的模型参数,我们分析了人口流动与跨区域感染关联强度之间的关系,并在此基础上进行了一系列反事实分析,以研究封锁措施的必要性以及封锁与其他防控措施之间的可替代性。我们的研究结果支持存在能够达到与封锁相同防控效果的非封锁型措施,并为设计更灵活的防控策略提供了有用的指导方针。