Forecasting the spread of COVID-19 using supervised machine learning models

G. Kamalam, K. Lalitha, E. Priyadarshini, V. Janani, P. M. Sasidhar
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引用次数: 3

Abstract

Coronavirus disease of 2019 (COVID-19) has become widespread within few months and it has lead to a dramatic loss for human life worldwide. This pandemic impacts tens of millions of deaths each day and the number of people were dead by covid-19 is gradually increasing throughout the globe. During this pandemic situation control, we tend to propose a future prediction using Machine Learning algorithms on the death rate, the number of recovered estimates and the number of daily confirmed COVID-19 cases reported within the next ten days. It is based on Machine Learning technique. This forecasting method will predict the upcoming number of COVID-19 cases. Here we use four standard models for forecasting includes linear Regression (LR), The Lowest Absolute and Selective Shrinking Operator (LASSO), Vector Assistance (SVM) and exponential smoothing (ES) will predict the number of COVID-19 cases in future. These four models make three predictions: the mortality rates, the number of newly affected COVID-19 cases and the cummulative number of recovered cases in the next 10 days. These methods are better used in the COVID-19 situation. Based upon the findings, it is a encouraging method to use these standard models in the current situation of COVID-19 spread. The analysis shows that among all the standard forecasting models, ES model performs best, then LR and LASSO which also performs well in predicting the new infected cases of corona, death rate and recovery cases. Whereas the results of SVM were very bad in all the prediction scenarios from the given covid-19 data set. The predictions made by these models relating to the current situation are accurate and will also be useful for future awareness of the future situation. This paper will be enhanced continuously and next we are planning to traverse the prediction methodology using the updated covid-19 data set and we will make use of the most precise and best Machine Learning models for forecasting in future. © 2021 American Institute of Physics Inc.. All rights reserved.
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使用监督机器学习模型预测COVID-19的传播
2019年冠状病毒病(COVID-19)在几个月内广泛传播,并在世界范围内造成了巨大的生命损失。这场大流行每天影响数千万人的死亡,全球死于covid-19的人数正在逐渐增加。在疫情控制期间,我们倾向于使用机器学习算法对未来10天内的死亡率、恢复估计数和每日报告的COVID-19确诊病例数提出未来预测。它是基于机器学习技术。这种预测方法可以预测未来的新冠肺炎病例数。本文采用线性回归(LR)、最低绝对和选择性收缩算子(LASSO)、向量辅助(SVM)和指数平滑(ES)四种标准模型预测未来的COVID-19病例数。这四个模型分别预测了未来10天的死亡率、新发病例数和累计治愈病例数。这些方法在2019冠状病毒病疫情中更适用。基于这些发现,在当前COVID-19传播情况下使用这些标准模型是一种令人鼓舞的方法。分析表明,在所有标准预测模型中,ES模型的预测效果最好,其次是LR和LASSO模型,后者对冠状病毒新发感染病例、死亡率和康复病例的预测效果也较好。而SVM在给定的covid-19数据集的所有预测情景下的结果都很差。这些模型对当前形势作出的预测是准确的,对未来形势的认识也很有用。本文将不断加强,接下来我们计划使用更新的covid-19数据集遍历预测方法,我们将在未来使用最精确和最好的机器学习模型进行预测。©2021美国物理学会。版权所有。
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