大流行期间确定封锁区域的新方法:以COVID-19为例

Md. Motaleb Hossen Manik
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引用次数: 0

摘要

2019年12月,新型冠状病毒成为全球流行病。由于COVID-19,所有正在进行的计划都被推迟了。在病人过多的地区实行了封锁。不断封锁地区对经济,特别是对发展中国家和不发达国家产生了重大的负面影响。但大多数国家都封锁了自己的地区,没有做出任何假设,哪些是成功的,哪些是失败的。在这种情况下,本文提出了一种新的方法,在考虑COVID-19时的封锁历史的同时,确定在任何大流行情况下,一个国家的哪些地区应该立即被封锁。这项工作利用了一个自建的数据集,其中包含来自世界上几个国家的数据,并将该地区成功实施封锁作为机器学习算法的目标属性,以确定未来要保持封锁的地区。在这里,随机森林算法提供了92.387%的最高精度,这表明该模型可以以令人印象深刻的精度识别封锁下保留的区域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Approach in Determining Areas to Lockdown during a Pandemic: COVID-19 as a Case Study
In December 2019, the Novel Coronavirus became a global epidemic. Because of COVID-19, all ongoing plans had been postponed. Lockdowns were imposed in areas where there was an excessive number of patients. Constantly locking down areas had a significant negative influence on the economy, particularly on developing and underdeveloped countries. But the majority of countries were locking down their areas without making any assumptions where some were successful and some were failures. In this situation, this paper presents a novel approach for determining which parts of a country should be immediately placed under lockdown during any pandemic situation while considering the lockdown history at the time of COVID-19. This work makes use of a self-established dataset containing data from several countries of the world and uses the successful presence of lockdown in that area as the target attribute for machine learning algorithms to determine the areas to keep under lockdown in the future. Here, the Random Forest algorithm has provided the highest accuracy of 92.387% indicating that this model can identify the areas with an impressive level of accuracy to retain under lockdown.
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