Discovering optimal strategies for mitigating COVID-19 spread using machine learning: Experience from Asia.

IF 11.7 1区 工程技术 Q1 Engineering
Yue Pan, Limao Zhang, Zhenzhen Yan, May O Lwin, Miroslaw J Skibniewski
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引用次数: 18

Abstract

To inform data-driven decisions in fighting the global pandemic caused by COVID-19, this research develops a spatiotemporal analysis framework under the combination of an ensemble model (random forest regression) and a multi-objective optimization algorithm (NSGA-II). It has been verified for four Asian countries, including Japan, South Korea, Pakistan, and Nepal. Accordingly, we can gain some valuable experience to better understand the disease evolution, forecast the prevalence of the disease, which can provide sustainable evidence to guide further intervention and management. Random forest with a proper rolling time-window can learn the combined effects of environmental and social factors to accurately predict the daily growth of confirmed cases and daily death rate on a national scale, which is followed by NSGA-II to find a range of Pareto optimal solutions for ensuring the minimization of the infection rate and mortality at the same time. Experimental results demonstrate that the predictive model can alert the local government in advance, allowing the accused time to put forward relevant measures. The temperature in the category of environment and the stringency index belonging to the social factor are identified as the top 2 important features to exert a greater impact on the virus transmission. Moreover, optimal solutions provide references to design the best control strategies towards pandemic containment and prevention that can accommodate the country-specific circumstance, which are possible to decrease the two objectives by more than 95%. In particular, appropriate adjustment of social-related features needs to take priority over others, since it can bring about at least 1.47% average improvement of two objectives compared to environmental factors.

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利用机器学习发现缓解COVID-19传播的最佳策略:来自亚洲的经验。
为了为应对新冠肺炎全球大流行提供数据驱动决策依据,本研究构建了集成模型(随机森林回归)和多目标优化算法(NSGA-II)相结合的时空分析框架。在日本、韩国、巴基斯坦、尼泊尔等4个亚洲国家已经得到了验证。由此可以获得一些宝贵的经验,更好地了解疾病的演变,预测疾病的流行,为指导进一步的干预和管理提供可持续的证据。随机森林具有适当的滚动时间窗,可以学习环境和社会因素的综合影响,准确预测全国范围内的日确诊病例增长和日死亡率,然后通过NSGA-II找到一系列Pareto最优解,同时保证感染率和死亡率最小。实验结果表明,该预测模型可以提前提醒当地政府,让被告及时提出相关措施。环境类别中的温度和社会因素中的严格指数被认为是对病毒传播影响最大的前两个重要特征。此外,最优解决方案为设计能够适应具体国情的遏制和预防大流行的最佳控制战略提供了参考,这些战略有可能将这两个目标降低95%以上。特别是社会相关特征的适当调整需要优先于其他因素,因为与环境因素相比,它可以使两个目标平均至少提高1.47%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Sustainable Cities and Society
Sustainable Cities and Society CONSTRUCTION & BUILDING TECHNOLOGYGREEN &-GREEN & SUSTAINABLE SCIENCE & TECHNOLOGY
CiteScore
18.40
自引率
13.70%
发文量
810
期刊介绍: Sustainable Cities and Society (SCS) is an international journal focusing on fundamental and applied research aimed at designing, understanding, and promoting environmentally sustainable and socially resilient cities.
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