Context and Learning Style Aware Recommender System for Improving the E-Learning Environment

被引:0
|
作者
Benabbes K. [1 ]
Khalid H. [1 ]
Ahmed Z. [2 ]
Hmedna B. [3 ]
El Mezouary A. [4 ]
机构
[1] MISC Laboratory, Faculty of Sciences, Ibn Tofail University, Kénitra
[2] SPM Research Team, ENSIAS, Mohammed V University, Rabat
[3] IMIS Laboratory, Faculty of Sciences, Ibn Zohr University, Agadir
[4] IRF-SIC Laboratory, EST, Ibn Zohr University, Agadir
关键词
context; decision tree rules; dropout; E-learning; learning styles; recommender system;
D O I
10.3991/ijet.v18i09.38361
中图分类号
学科分类号
摘要
The learning management system (LMS) is an e-learning software that raised the interest of disparate learners’ groups. However, learners have difficulties in finding learning resources tailored to their preferences in the best way at the right time. Making the learning process more efficient and pleasant for learners can be achieved by using context and learning styles such as customizing aspects. This study proposes a new data-driven approach to retrieve learners’ characteristics using traces of their activities based on the Felder-Silverman Learning Style Model (FSLSM). In this research, the traces of 714 learners who enrolled in three agronomy courses taught at IAV HASSAN II (winter session 2019, 2020, and 2021) were analyzed. Learners are categorized into clusters by their preference level for global/sequential learning styles, using an unsupervised clustering method. Then a classifier model tailored to our requirements was trained and based on the learner’s learning style and their current context, a learning object recommendation list is proposed for them. The results revealed that the k-means algorithm performed well in identifying learning styles (LS) and the use of context features defined from the learners’ adaptive close environments improved learning performance with an accuracy of over 96% given that most of the learners preferred a global learning style. © 2023, International Journal of Emerging Technologies in Learning. All Rights Reserved.
引用
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页码:180 / 202
页数:22
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