利用机器学习对在线教育中工科学生的表现进行分类:情感、认知和行为方面

Gülsüm Asiksoy, Didem Islek
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引用次数: 0

摘要

在快速发展的在线学习环境中,准确预测学生的表现对于提高教育质量和学生的整体成绩起着重要作用。本研究调查了机器学习算法根据情感、认知和行为因素对学生在线课程成绩进行分类的有效性,从而制定更有效的教学策略和干预措施,帮助学生取得成功。该研究使用了一个数据集来训练和评估六种机器学习算法,该数据集包含了 2022-2023 年秋季和春季学期在一所私立大学选修天文学物理课程的 485 名工科学生:支持向量机 (SVM)、K-近邻 (KNN)、Naive Bayes (NB) 分类器、逻辑回归、决策树和随机森林。随机森林算法的分类准确率最高(87%),能正确地将 87% 的学生分为高、中、低三个表现类别。此外,研究还发现,焦虑和期望是提高学生在线课程学习成绩的最有影响力的因素,而最无效的特征是社会隔离。研究结果表明,即使功能有限,机器学习也能有效地对在线课程中的学生成绩进行分类,从而使教育工作者能够加强教学策略和干预措施,为学生提供更好的支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classifying Engineering Students Performance in Online Education with Machine Learning: Affective, Cognitive, and Behavioral Aspects
In the rapidly evolving online learning environment, accurate prediction of student performance plays an important role in improving the quality of education and overall student outcomes. This study investigated the effectiveness of machine learning algorithms in classifying student performance in online courses based on affective, cognitive, and behavioural factors to develop more effective teaching strategies and interventions to support student success. A dataset of 485 engineering students who took Astronomy Physics at a private university in the fall and spring semesters of 2022-2023 was used to train and evaluate six machine learning algorithms: Support vector machines (SVM), K-nearest neighbours (KNN), Naive Bayes (NB) classifier, logistic regression, decision tree, and random forest. The random forest algorithm achieved the highest classification accuracy (87%), correctly classifying 87% of students into one of three performance categories: high, medium, or low. Moreover, the study determined that anxiety and expectations are the most influential factors in increasing student performance in online courses, while the least effective feature is social isolation. The findings suggest that Machine learning can efficiently categorize student performance in online courses, even with a limited set of features, enabling educators to enhance teaching strategies and interventions for better student support.
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