A Comparative Analysis of COVID Forecasting by Using Various Machine Learning Methods

Jamaluddin Mir
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Abstract

Covid-19 emerged as one of the most infectious diseases in the history of mankind, affecting nearly 250 million people all over the world in just a short period. The pandemic which started in China, has now spread all over the world, taking about 5 million lives globally. This has also severely affected the economies of countries and has proved to be a burden on health care systems. Due to these reasons, forecasting the spread of the disease has become critical so that concerned government authorities in countries can have the chance to mitigate the spread and plan health care resources efficiently and properly. This makes it more important to have a reliable forecast so that resources can be planned ahead of time. In the present work, linear regression is used for time forecasting the spread of Covid-19 in Pakistan. Statistical parameters and metrics have been used to evaluate and validate the model. The results show that linear regression results are highly reliable, time efficient and accurate.  
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不同机器学习方法对COVID预测的比较分析
新冠肺炎成为人类历史上最具传染性的疾病之一,在短时间内影响了全球近2.5亿人。新冠肺炎疫情始于中国,目前已蔓延至世界各地,全球约有500万人死亡。这也严重影响了各国的经济,并已证明是卫生保健系统的负担。由于这些原因,预测该疾病的传播已变得至关重要,以便各国有关政府当局有机会减轻传播并有效和适当地规划卫生保健资源。这使得有一个可靠的预测变得更加重要,这样就可以提前计划资源。在本研究中,线性回归用于时间预测Covid-19在巴基斯坦的传播。统计参数和度量已被用于评估和验证模型。结果表明,线性回归结果具有较高的可靠性、时效性和准确性。
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