A Meta-analysis of Machine Learning for the Diagnosis of Covid-19 Disease

Mona N Gowda, Dalwinder Singh
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Abstract

Coronavirus 2019 has wreaked havoc on people’s lives all across the globe. The number of positive cases is increasing, and the Asian country is now one of the most severely impacted. This article examines machine learning models that are more accurate at predicting covid. Based on the data from China, regression-based, decision tree-based, naive Bayes, and random forest-based models were developed and verified on a sample from India. A data-driven strategy with better precision, such as the one used here, is beneficial for the government and public to respond in a proactive manner. This study reveals that the suggested framework has superior capabilities in detecting COVID-19.
机器学习诊断Covid-19疾病的meta分析
2019冠状病毒给全球人民的生活造成了严重破坏。阳性病例的数量正在增加,这个亚洲国家现在是受影响最严重的国家之一。本文研究了在预测covid方面更准确的机器学习模型。基于中国的数据,开发了基于回归的模型、基于决策树的模型、基于朴素贝叶斯的模型和基于随机森林的模型,并在印度样本上进行了验证。像这里使用的这种数据驱动的战略,精度更高,有利于政府和公众以积极主动的方式作出反应。本研究表明,该框架在检测COVID-19方面具有优越的能力。
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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