Time series clustering of COVID-19 pandemic-related data

Zhixue Luo , Lin Zhang , Na Liu , Ye Wu
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引用次数: 1

Abstract

The COVID-19 pandemic continues to impact daily life worldwide. It would be helpful and valuable if we could obtain valid information from the COVID-19 pandemic sequential data itself for characterizing the pandemic. Here, we aim to demonstrate that it is feasible to analyze the patterns of the pandemic using a time-series clustering approach. In this work, we use dynamic time warping distance and hierarchical clustering to cluster time series of daily new cases and deaths from different countries into four patterns. It is found that geographic factors have a large but not decisive influence on the pattern of pandemic development. Moreover, the age structure of the population may also influence the formation of cluster patterns. Our proven valid method may provide a different but very useful perspective for other scholars and researchers.

COVID-19大流行相关数据的时间序列聚类
新冠肺炎疫情继续影响着世界各地的日常生活。如果我们能够从新冠肺炎大流行序列数据本身中获得有效信息来描述大流行,这将是有帮助和有价值的。在这里,我们的目的是证明使用时间序列聚类方法分析疫情模式是可行的。在这项工作中,我们使用动态时间扭曲距离和层次聚类将来自不同国家的每日新增病例和死亡人数的时间序列聚类为四种模式。研究发现,地理因素对疫情发展模式有很大但不是决定性的影响。此外,人口的年龄结构也可能影响集群模式的形成。我们被证明有效的方法可能会为其他学者和研究人员提供一个不同但非常有用的视角。
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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