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Student Behavior Analysis to Detect Learning Styles in Moodle Learning Management System

机译:学生行为分析在Moodle学习管理系统中检测学习风格

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E-learning is distance learning that uses computer technology, networks of computers and the internet. E-Learning allows students to study via computers in their respective places without having to go to study/lectures in class physically. Moodle is a Learning Management System that is used as a medium for delivering E-Learning. The problem that often arises in e-learning is that in the learning process, students interact more with e-learning media so that teachers will find it difficult to monitor student behavior when using learning media. In fact, students in some cases tend to drop out or attend lesser classes. Moodle can capture student interactions and activities while studying online using log files. From the results of student interactions and activities on e-learning, it can be used to determine their learning style. Identifying student learning styles can improve the performance of the learning process. This research suggests an approach to automatically predicting learning styles based on the Felder and Silverman learning style (FSLSM) model using the Decision Tree algorithm and the ensemble Gradient Boosted Tree method. We've used actual data sets derived from e-learning program log files to perform our work. We use precision and accuracy to assess the results. The results show that our approach is delivering excellent results.
机译:电子学习是使用计算机技术,计算机网络和互联网的远程学习。电子学习使学生可以在各自地点的计算机上学习,而不必亲自去上课/上课。 Moodle是一个学习管理系统,用作提供电子学习的媒介。电子学习中经常出现的问题是,在学习过程中,学生与电子学习媒体的互动更多,因此教师将发现使用学习媒体时难以监控学生的行为。实际上,在某些情况下,学生倾向于辍学或参加较少的课程。 Moodle可以在使用日志文件在线学习时捕获学生的互动和活动。从学生在电子学习中的互动和活动的结果,可以用来确定他们的学习方式。确定学生的学习方式可以提高学习过程的绩效。这项研究提出了一种基于Felder和Silverman学习风格(FSLSM)模型,使用决策树算法和整体梯度提升树方法自动预测学习风格的方法。我们已经使用了从电子学习程序日志文件中获得的实际数据集来执行我们的工作。我们使用精度和准确性来评估结果。结果表明,我们的方法可提供出色的结果。

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