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Machine Learning Approach For Clustering Of Countries To Identify The Best Strategies To Combat Covid-19

机译:各国聚类机器学习方法,以确定打击Covid-19的最佳策略

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The purpose of this study is to identify how different government measures impacted the level of Covid-19 influence on countries of similar nature. Demographic, economic, health, and weather conditions were considered to identify countries that are inherently similar in nature. This grouping along with Covid-19 epidemiology data was used to cluster countries over a period of time after Covid-19 struck. We identified those countries which changed clusters over a time period and were influenced differently by the impact of Covid-19. We then looked at the government measures through the stringency index of containment measures and observed a relation in how different stringency measures impacted the countries differently even though they belonged to the same original group. We also observed that countries that eased restrictions quickly after containment measures had to go back to the earlier stringent measures. Gradual ease of containment measure was more efficient in tackling Covid-19. The inherent grouping of countries done in our study can be used in the future as well to deploy similar measures when faced with Covid-19 like pandemic situation. The strategies adopted on average by countries within each inherent cluster can become the base for handling Covid-19 or any such pandemic in the future. The significance of the work resides in the fact that the strategies would not be aligned to economic conditions of a nation (developed versus developing) or a single factor like healthcare facilities but based on a varied list of inherent factors using machine learning methods.
机译:本研究的目的是确定不同的政府措施如何影响Covid-19对类似性国家的影响程度。人口统计学,经济,健康和天气状况被认为是识别本质上固有的国家。该分组与Covid-19流行病学数据一起用于Covid-19击中后一段时间内的群集国家。我们确定了在时间段内改变了群集的国家,而Covid-19的影响是不同的影响。然后,我们通过遏制措施的严格指数来看待政府措施,并观察了不同的严格措施如何影响国家的不同程度措施,即使它们属于同一原始组。我们还观察到,在遏制措施后迅速限制的国家必须恢复早期的严格措施。逐步易于遏制措施在解决Covid-19方面更有效。在我们的研究中所做的国家的固有分组也可以在未来使用,并在面对像大流行情况时面临类似的措施。每个固有群体中的国家/地区通过平均通过的策略可以成为处理Covid-19或未来任何此类大流行的基础。工作的重要性纳入了策略不会与国家(发展与发展)的经济状况(也是医疗保健设施等单一因素,而是根据使用机器学习方法的固有因素​​列表。

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