The Topological Properties of COVID-19 Global Activity Time Series Forecasting

Changchang Hu
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Abstract

Topological data analysis (TDA) is a combination of statistical, computational and topological methods that would allow one to find shape-like structures in data. The mathematical concepts of time series and topological data analysis are seldomly used in conjunction. The goal of this paper is to introduce readers to the combination of time series forecasting with topological data analysis as a technique to solve real world problems. The COVID-19 pandemic is a relevant topic that is known worldwide and will be the test subject used in this experiment. A time series forecast was produced to determine future trends of Coronavirus cases in the top 10 most affected countries. This forecast can inform health officials and improve regulations for the future in an effort to circumvent the effects of COVID-19. Performing topological data analysis on this forecast generated the unique topological structure of the time series dataset. This paper concluded that a majority of the screened countries will continue to see a rise in deaths for the next 6 months. Additionally, the topological structure derived from the forecast model consisted of a loop and immeasurable points. By writing this paper, the author encourages others to find innovative solutions to modern problems using this combination of mathematics.
COVID-19全球活动时间序列预测的拓扑特性
拓扑数据分析(TDA)是统计、计算和拓扑方法的结合,它允许人们在数据中找到类似形状的结构。时间序列和拓扑数据分析的数学概念很少结合使用。本文的目的是向读者介绍时间序列预测与拓扑数据分析的结合,作为解决现实世界问题的一种技术。COVID-19大流行是一个全球知名的相关话题,将成为本次实验的测试对象。制作了时间序列预测,以确定十大受影响最严重国家的冠状病毒病例的未来趋势。这一预测可以为卫生官员提供信息,并改善未来的法规,以规避COVID-19的影响。对该预测进行拓扑数据分析,生成了时间序列数据集的独特拓扑结构。本文的结论是,在未来6个月内,大多数接受筛查的国家的死亡人数将继续上升。此外,由预测模型导出的拓扑结构由一个环和不可测点组成。通过撰写这篇论文,作者鼓励其他人利用这种数学结合来找到解决现代问题的创新方法。
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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