Integrating web usage mining for an automatic learner profile detection: A learning styles-based approach

Ouafae El Aissaoui, Yasser El Madani El Alami, L. Oughdir, Youssouf El Allioui
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引用次数: 22

Abstract

With the technological revolution of Internet and the information overload, adaptive E-learning has become the promising solution for educational institutions since it enhances students' learning process according to many factors such as their learning styles. Learning styles are a criteria of great import in E-learning environment because they can help the system to effectively personalize students' learning process. Generally, the traditional way of detecting students' learning style is based on asking students to fill out a questionnaire. However, using this static technique presents many problems. Some of these problems include the lack of self-awareness of students of their learning preferences. In addition, almost all students are bored when they are asked to fill out a questionnaire. Thus, in this work, we present an automatic approach for detecting students' learning style based on web usage mining. It consists in classifying students' log files according to a specific learning style model (Felder and Silverman model) using clustering algorithms (K-means algorithm). In order to test the efficiency of our work, we use a real-world dataset gathered from an E-learning system. Experimental results show that our approach provide promising results.
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集成web使用挖掘的学习者特征自动检测:一种基于学习风格的方法
随着互联网的技术革命和信息超载,自适应E-learning根据学生的学习方式等多种因素来提高学生的学习过程,已成为教育机构的一种有前景的解决方案。在E-learning环境中,学习风格是一个非常重要的标准,因为它可以帮助系统有效地个性化学生的学习过程。一般来说,传统的检测学生学习风格的方法是让学生填写调查问卷。然而,使用这种静态技术会出现许多问题。其中一些问题包括学生对自己的学习偏好缺乏自我意识。此外,当他们被要求填写问卷时,几乎所有的学生都感到无聊。因此,在这项工作中,我们提出了一种基于web使用挖掘的自动检测学生学习风格的方法。它包括使用聚类算法(K-means算法)将学生的日志文件按照特定的学习风格模型(Felder和Silverman模型)进行分类。为了测试我们工作的效率,我们使用了从电子学习系统收集的真实数据集。实验结果表明,该方法具有较好的效果。
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