A Study of Using Machine Learning in Predicting COVID-19 Cases

Maleerat Maliyaem, Nguyen Minh Tuan, Demontray Lockhart, S. Muenthong
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引用次数: 3

Abstract

With an unprecedented challenge to combat COVID-19, the prediction of confirmed cases is very important to ensure medical aid and healthy living conditions. In order to predict confirmed cases, the current study uses a dataset prepared by the White House Office of Science and Technology Policy which brought together companies and research to address questions concerning COVID-19. The importance of this was to identify factors that seem to affect the transmission rate of COVID-19. The focus of the current research, however, is to predict global cases of COVID-19. There have been many papers written about the prediction of confirmed cases and fatalities, but they failed to show promising results. Our research applies machine learning for predicting fatalities in the world using the COVID-19 Forecasting dataset from Kaggle. After trying several algorithms, our findings reveal that Logistic Regression, Decision Tree, KNeighbors, GaussianNB, and Random Forest algorithms provide the best predictions. Thus, the results show Random Forest as having the highest accuracy followed by Logistic Regression and Decision Tree. The results are promising opening up the door for further research.
机器学习在COVID-19病例预测中的应用研究
面对前所未有的抗疫挑战,确诊病例预测对于确保医疗救助和健康生活条件至关重要。为了预测确诊病例,目前的研究使用了白宫科技政策办公室准备的数据集,该数据集汇集了公司和研究人员,以解决与COVID-19有关的问题。这样做的重要性在于确定似乎影响COVID-19传播率的因素。然而,目前的研究重点是预测全球新冠肺炎病例。关于预测确诊病例和死亡人数的论文有很多,但它们都没有显示出令人鼓舞的结果。我们的研究利用Kaggle的COVID-19预测数据集,应用机器学习来预测世界上的死亡人数。在尝试了几种算法之后,我们的研究结果表明,逻辑回归、决策树、KNeighbors、GaussianNB和随机森林算法提供了最好的预测。因此,结果显示随机森林具有最高的准确性,其次是逻辑回归和决策树。这些结果很有希望,为进一步的研究打开了大门。
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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