Analyzing Differences between Online Learner Groups during the COVID-19 Pandemic through K-Prototype Clustering

Guanggong Ge, Quanlong Guan, Lusheng Wu, Weiqi Luo, Xingyu Zhu
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引用次数: 1

Abstract

Online learning is a very important means of study, and has been adopted in many countries worldwide. However, only recently are researchers able to collect and analyze massive online learning datasets due to the COVID-19 epidemic. In this article, we analyze the difference between online learner groups by using an unsupervised machine learning technique, i.e., k-prototypes clustering. Specifically, we use a questionnaire designed by domain experts to collect various online learning data, and investigate students’ online learning behavior and learning outcomes through analyzing the collected questionnaire data. Our analysis results suggest that students with better learning media generally have better online learning behavior and learning results than those with poor online learning media. In addition, both in economically developed or undeveloped regions, the number of students with better learning media is less than the number of students with poor learning media. Finally, the results presented here show that whether in an economically developed or an economically undeveloped region, the number of students who are enriched with learning media available is an important factor that affects online learning behavior and learning outcomes.
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基于k -原型聚类分析COVID-19大流行期间在线学习群体差异
在线学习是一种非常重要的学习方式,已被世界上许多国家所采用。然而,直到最近,由于新冠肺炎疫情,研究人员才能够收集和分析大量在线学习数据集。在本文中,我们通过使用无监督机器学习技术(即k-原型聚类)来分析在线学习者组之间的差异。具体而言,我们使用由领域专家设计的问卷收集各种在线学习数据,并通过分析收集到的问卷数据来调查学生的在线学习行为和学习成果。我们的分析结果表明,使用较好的学习媒体的学生总体上比使用较差的学习媒体的学生有更好的在线学习行为和学习效果。此外,无论是在经济发达地区还是在经济不发达地区,学习媒介较好的学生数量都少于学习媒介较差的学生数量。最后,本文的研究结果表明,无论在经济发达地区还是经济不发达地区,拥有丰富学习媒体的学生数量都是影响在线学习行为和学习成果的重要因素。
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