新型冠状病毒肺炎全球爆发的聚类结构

IF 0.5 Q4 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
Fulya Gokalp-Yavuz, Y. Güney, Ş. Özdemir, Y. Tuaç, O. Arslan
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引用次数: 0

摘要

新型冠状病毒病的传播始于中国,然后转移到韩国和日本,然后是欧洲的几个国家,最后是北美和南美大陆的国家。由于病毒在世界范围内传播,我们同时使用所有可用的每日确诊病例、康复病例和死亡数据,在调整人口后,在时间和空间维度上对国家进行分组。为此,本文采用动态时间规整方法实现了时间序列聚类,并在世界地图上标记了相关的聚类,以便于更好的视觉理解。分组国家将了解病毒的传播情况,指导决策者实施未来的预防接种政策,并帮助他们制定针对新病毒变体的全球解决方案。从聚类分析中获得的主要结果之一是,欧洲、北美和南美大陆在每日每百万确诊病例数方面具有同质结构,而在每日每百万康复病例数方面具有相对更大的异质性,因此绝大多数国家处于非常高的聚类。低群或中群国家的缺席表明,这些大陆必须更加激烈地抗击病毒。非洲和亚洲大陆在所有情况下都是异质的。因此,这些大洲应侧重于针对具体国家的保护措施,以抗击该病毒。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Clustering Structure of the COVID-19 Outbreak in Global Scale
Spreading of novel coronavirus disease started in China and moved to Korea and Japan, then several countries in Europe, and the last step to the countries in the North and South American continents. Since the virus spread worldwide, we simultaneously use all available daily confirmed cases, recovered cases, and death data to cluster countries in time and spatial dimensions after adjusting for population. For this aim, time-series clustering with the dynamic time warping method is implemented and relevant clusters are marked on the world maps for a better visual understanding in this paper. Grouping countries will give an idea of the spread of the virus, guide decision-makers to implement future prevention vaccination policies, and help them generate global solutions against new virus variants. One of the main results obtained from the cluster analysis is that the European, North and South American continents have homogeneous structures regarding the number of daily confirmed cases per million and relatively more heterogeneous regarding the daily number of recoveries per million such that the overwhelming majority of countries are in the very high cluster. The absence of countries from the low or middle clusters indicates that these continents have to fight the virus more fiercely. African and Asian continents are heterogeneous in all cases. Therefore, these continents should focus on country-specific protections to fight against the virus.
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来源期刊
Advances in Data Science and Adaptive Analysis
Advances in Data Science and Adaptive Analysis MATHEMATICS, INTERDISCIPLINARY APPLICATIONS-
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