Sentiment analysis on Education transformation during Covid-19 using Arabic tweets in KSA.

N. Aslam, Irfan Ullah Khan, Taif AlKhales, Reem AlMakki, Shahad AlNajim, Shaden Almarshad, Rana S. M. Saad
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Abstract

The emergence of COVID-19 pandemic has changed the whole world. To prevent the spread of the virus, different precautionary measure and policies have been defined, one of them is distance learning. It has led to the educational transformation from physical education to online learning. Similarly, in KSA online education is adopted since March 2020. Inorder to extract the individual perception about the online education in KSA, twitter data was used. Arabic tweets were collected using twitter API. Furthermore, several machine learning models such as Support Vector Machine (SVM), Naïve Bayes (NB), Random Forest (RF), Logistic regression, K-nearest neighbors was used develop an automated sentiment analysis of online education related tweets in KSA. For feature extraction and selection N-gram and Term Frequency–Inverse Document Frequency (TF-IDF) was used. Logistic Regression achieved the highest accuracy of 69.33% for multiclass and Random Forest achieved accuracy of 80.35%. According to the dataset, most of the individuals have negative opinion about the online learning as the number of negative tweets are higher as compared to positive and neutral class
基于沙特阿拉伯语推文的疫情期间教育转型情绪分析
新冠肺炎大流行的出现改变了整个世界。为防止病毒传播,制定了不同的预防措施和政策,其中之一就是远程教育。它导致了从体育教育到在线学习的教育转型。同样,自2020年3月起,沙特阿拉伯开始采用在线教育。为了提取个人对KSA在线教育的看法,使用twitter数据。使用twitter API收集阿拉伯语tweet。此外,使用支持向量机(SVM)、Naïve贝叶斯(NB)、随机森林(RF)、逻辑回归、k近邻等几种机器学习模型,开发了KSA在线教育相关推文的自动情感分析。特征提取和选择采用N-gram和Term Frequency - inverse Document Frequency (TF-IDF)。对于多类别,Logistic回归的准确率最高,为69.33%,随机森林的准确率最高,为80.35%。根据数据集,大多数个人对在线学习持负面看法,因为负面推文的数量高于积极和中立的班级
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