Enhancing learner performance prediction on online platforms using machine learning algorithms

Q2 Mathematics
Mohammed Jebbari, B. Cherradi, S. Hamida, Mohamed-Amine Ouassil, Taoufiq El Harrouti, A. Raihani
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引用次数: 0

Abstract

E-learning has emerged as a prominent educational method, providing accessible and flexible learning opportunities to students worldwide. This study aims to comprehensively understand and categorize learner performance on e-learning platforms, facilitating timely support and interventions for improved academic outcomes. The proposed model utilizes various classifiers (random forest (RF), neural network (NN), decision tree (DT), support vector machine (SVM), and K-nearest neighbors (KNN)) to predict learner performance and classify students into three groups: fail, pass, and withdrawn. Commencing with an analysis of two distinct learning periods based on days elapsed (≤120 days and another exceeding 220 days), the study evaluates the classifiers’ efficacy in predicting learner performance. NN (82% to 96%) and DT (81%-99.5%) consistently demonstrate robust performance across all metrics. The classifiers exhibit significant performance improvement with increased data size, suggesting the benefits of sustained engagement in the learning platform. The results highlight the importance of selecting suitable algorithms, such as DT, to accurately assess learner performance. This enables educational platforms to proactively identify at-risk students and offer personalized support. Additionally, the study highlights the significance of prolonged platform usage in enhancing learner outcomes. These insights contribute to advancing our understanding of e-learning effectiveness and inform strategies for personalized educational interventions.
利用机器学习算法加强在线平台上学习者的成绩预测
电子学习已成为一种重要的教育方法,为世界各地的学生提供了方便灵活的学习机会。本研究旨在全面了解学习者在电子学习平台上的表现并对其进行分类,以便及时提供支持和干预,从而提高学习成绩。所提出的模型利用各种分类器(随机森林(RF)、神经网络(NN)、决策树(DT)、支持向量机(SVM)和 K-近邻(KNN))来预测学习者的成绩,并将学生分为三组:不及格、及格和退学。本研究首先分析了两个不同的学习阶段(一个学习天数≤120 天,另一个学习天数超过 220 天),然后评估了分类器在预测学习成绩方面的功效。NN(82% 到 96%)和 DT(81%-99.5%)在所有指标上都表现出稳定的性能。随着数据量的增加,分类器的性能也有显著提高,这表明持续参与学习平台的好处。这些结果凸显了选择合适算法(如 DT)来准确评估学习者成绩的重要性。这使教育平台能够主动识别有风险的学生并提供个性化支持。此外,研究还强调了长期使用平台对提高学习效果的重要意义。这些见解有助于加深我们对电子学习效果的理解,并为个性化教育干预策略提供参考。
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来源期刊
CiteScore
2.90
自引率
0.00%
发文量
782
期刊介绍: The aim of Indonesian Journal of Electrical Engineering and Computer Science (formerly TELKOMNIKA Indonesian Journal of Electrical Engineering) is to publish high-quality articles dedicated to all aspects of the latest outstanding developments in the field of electrical engineering. Its scope encompasses the applications of Telecommunication and Information Technology, Applied Computing and Computer, Instrumentation and Control, Electrical (Power), Electronics Engineering and Informatics which covers, but not limited to, the following scope: Signal Processing[...] Electronics[...] Electrical[...] Telecommunication[...] Instrumentation & Control[...] Computing and Informatics[...]
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