Covid-19 Severity Classification Using Supervised Learning Approach

Nurul Fathia Mohamand Noor, Herold Sylvestro Sipail, N. Ahmad, N. Noor
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Abstract

This paper presented work on supervised machine learning techniques using K-NN, Linear SVM, Naïve Bayes, Decision Tree (J48), Ada Boost, Bagging and Stacking for the purpose to classify the severity group of covid-19 symptoms. The data was obtained from Kaggle dataset, which was obtained through a survey collected from the participant with varying gender and age that had visited 10 or more countries including China, France, Germany Iran, Italy, Republic of Korean, Spain, UAE, other European Countries (Other-EUR) and Others. The survey is Covid-19 symptom based on guidelines given by the World Health Organization (WHO) and the Ministry of Health and Family Welfare, India which then classified into 4 different levels of severity, Mild, Moderate, Severe, and None. The results from the seven classifiers used in this study showed very low classification results.
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使用监督学习方法进行Covid-19严重程度分类
本文介绍了使用K-NN、线性支持向量机、Naïve贝叶斯、决策树(J48)、Ada Boost、Bagging和Stacking进行监督机器学习技术的工作,目的是对covid-19症状的严重程度进行分类。数据来自Kaggle数据集,该数据集通过对不同性别和年龄的参与者进行调查而获得,这些参与者访问了10个或更多国家,包括中国,法国,德国,伊朗,意大利,大韩民国,西班牙,阿联酋,其他欧洲国家(other - eur)和其他国家。该调查是根据世界卫生组织(世卫组织)和印度卫生和家庭福利部给出的指导方针对Covid-19症状进行的,该指导方针将严重程度分为轻度、中度、严重和无四个不同级别。本研究中使用的七个分类器的结果显示分类结果非常低。
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