Comparison of Machine Learning Algorithms in Predicting the COVID-19 Outbreak

Asiye Bilgili
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Abstract

Health informatics is an interdisciplinary field in the computer and health sciences. Health informatics, which enables the effective use of medical information, has the potential to reduce both the cost and the burden of healthcare workers during the pandemic process. Using the machine learning algorithms support vector machines, naive bayes, k-nearest neighbor, and C4.5 algorithms, a model performance evaluation was performed to identify the algorithm that will show the highest performance for the prediction of the disease. Three separate training and test datasets were created 70% - 30%, 75% - 25%, and 80% - 20%, respectively. The implementation phase of the study was carried out by following the CRISP-DM steps, and the analyses were made using the R language. By examining the model performance evaluation criteria, the findings show that the C4.5 algorithm showed the best performance with 70% training dataset.
机器学习算法在COVID-19疫情预测中的比较
健康信息学是计算机与健康科学的交叉学科。卫生信息学能够有效利用医疗信息,有可能在大流行期间减少保健工作者的费用和负担。使用机器学习算法支持向量机、朴素贝叶斯、k近邻和C4.5算法,进行模型性能评估,以确定在预测疾病方面表现出最高性能的算法。分别以70% - 30%、75% - 25%和80% - 20%的比例创建三个独立的训练和测试数据集。本研究的实施阶段按照CRISP-DM步骤进行,并使用R语言进行分析。通过对模型性能评价标准的检验,发现C4.5算法在70%的训练数据集下表现出最好的性能。
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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