Identifying Learning Styles in Learning Management Systems by Using Indications from Students' Behaviour

S. Graf, Kinshuk, Tzu-Chien Liu
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引用次数: 189

Abstract

Making students aware of their learning styles and presenting them with learning material that incorporates their individual learning styles has potential to make learning easier for students and increase their learning progress. This paper proposes an automatic approach for identifying learning styles with respect to the Felder-Silverman learning style model by inferring their learning styles from their behaviour during they are learning in an online course. The approach was developed for learning management systems, which are commonly used in e-learning. In order to evaluate the proposed approach, a study with 127 students was performed, comparing the results of the automatic approach with those of a learning style questionnaire. The evaluation yielded good results and demonstrated that the proposed approach is suitable for identifying learning styles. By using the proposed approach, studentspsila learning styles can be identified automatically and be used for supporting students by considering their individual learning styles.
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利用学生行为的指示来识别学习管理系统中的学习风格
让学生意识到他们的学习风格,并向他们展示包含他们个人学习风格的学习材料,这有可能使学生的学习更容易,并提高他们的学习进度。本文提出了一种自动识别学习风格的方法,根据费尔德-西尔弗曼学习风格模型,通过他们在在线课程学习期间的行为来推断他们的学习风格。该方法是为电子学习中常用的学习管理系统开发的。为了评估所提出的方法,对127名学生进行了一项研究,将自动方法的结果与学习风格问卷的结果进行了比较。结果表明,该方法适用于学习风格的识别。通过使用所提出的方法,可以自动识别学生的学习风格,并通过考虑他们的个人学习风格来支持学生。
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