Trajectory Tracking of COVID-19 Epidemic Risk Using Self-organizing Feature Map

Ningshan Chen, An Chen, Xiaohui Yao
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Abstract

The ongoing COVID-19 has become a worldwide pandemic with increasing confirmed cases and deaths across the globe. By July 2022, the number of cumulative confirmed cases reported to the World Health Organization (WHO) has risen to 550 million, with more than 6 million deaths in total. The analysis of its epidemic risk remains the focus of attention all over the world for a long time. The Self-organizing feature map (SOM), a vector quantization method, offers a data mapping approach to tracking the response of time series data on a well-trained map. This study aims at a trajectory tracking of COVID-19 epidemic risk in 237 countries measured by the number of new confirmed cases and deaths per day for over one year. A hybrid clustering method uses SOM and K-means to generate a risk map and then displays the trajectory of daily risk on the map. The experimental results demonstrate the promising functionality of SOM for trajectory tracking and give experts insights into the dynamic changes of COVID-19 risk.
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基于自组织特征映射的COVID-19流行风险轨迹跟踪
正在进行的COVID-19已成为全球大流行,全球确诊病例和死亡人数不断增加。截至2022年7月,向世界卫生组织(世卫组织)报告的累计确诊病例已上升至5.5亿例,总死亡人数超过600万。长期以来,对其流行风险的分析一直是世界各国关注的焦点。自组织特征映射(SOM)是一种矢量量化方法,提供了一种数据映射方法来跟踪时间序列数据在训练良好的地图上的响应。这项研究旨在追踪237个国家的COVID-19流行风险轨迹,以一年多来每天的新确诊病例和死亡人数为衡量标准。混合聚类方法使用SOM和K-means生成风险图,然后在地图上显示每日风险的轨迹。实验结果证明了SOM在轨迹跟踪方面的良好功能,并为专家了解COVID-19风险的动态变化提供了帮助。
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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