Multi-Label Classification of Learning Objects Using Clustering Algorithms Based on Feature Selection

被引:0
|
作者
Amane M. [1 ]
Aissaoui K. [2 ]
Berrada M. [1 ]
机构
[1] Artificial Intelligence, Data Science and Emergent Systems Laboratory, Sidi Mohammed Ben Abdellah University, Fez
[2] Artificial Smart ICT – ENSA – Mohammed Premier University, Oujda
关键词
Clustering algorithms; E-learning systems; Feature selection techniques; Learning objects (los); Multi-label classification (mlc); Sharable content object reference model (scorm);
D O I
10.3991/ijet.v17i20.32323
中图分类号
学科分类号
摘要
In the field of online learning, the development of learning objects (LOs) has been increased. LOs promote reusing and referencing educational content in various learning environments. However, despite this progress, the lack of a conceptual model for sharing suitable LOs between learners makes multiple challenges. In this regard, multi-label classification plays a significant role to make high-quality LOs, which can be accessible and reusable. This article highlights a new way of using learning objects based on Multi-Label Classification (MLC) and clustering algorithms with feature selection techniques. It suggests a new system that makes the most suitable choice among many alternative sources based on the Sharable Content Object Reference Model (SCORM). The proposed algorithm has been tested on a real-world application dataset related to the data analysis service for the learning science community. The experimental results show that our algorithm outperforms the traditional approach and produces good results © 2022, International Journal of Emerging Technologies in Learning.All Rights Reserved.
引用
收藏
页码:248 / 260
页数:12
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