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A comparative analysis of the automatic modeling of Learning Styles through Machine Learning techniques

机译:机器学习技术对学习风格自动建模的比较分析

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This Research Full Paper introduces a machine learning methodology to automatically identify the learning style of students interacting with a Learning Management System. Studies in Cognitive Psychology and Pedagogy have already reported that each individual has a specific Learning Style, which describes her/his best means of perceiving and acquiring knowledge. The detection of the personal Learning Style of each student has long been made by using questionnaires; an analysis that demands too much effort, mainly in courses with hundreds of students. Therefore, the automatic modeling of learning styles has gained attention in the computing and education areas. This study compares different Machine Learning algorithms for the detection of students' Learning Styles. As such, a dataset is extracted from a real course in the Moodle learning platform. This course had 105 students interacting with 252 learning objects during 12 months. The learning styles were described using the classic model of Felder-Silverman. According to the experimental results using these data, a single machine learning algorithm was not able to induce models with predictive accuracy comparable to those from existing alternatives. However, when models from different algorithms were combined, it was possible to obtain a predictive accuracy superior to those reported in the related literature.
机译:本研究全文介绍了一种机器学习方法,可自动识别与学习管理系统进行交互的学生的学习风格。认知心理学和教育学研究已经报告说,每个人都有特定的学习风格,这描述了他/她感知和获取知识的最佳方法。长期以来,通过使用调查表来检测每个学生的个人学习风格;这种分析需要大量的精力,主要是针对数百名学生的课程。因此,学习风格的自动建模已在计算机和教育领域受到关注。这项研究比较了不同的机器学习算法来检测学生的学习风格。这样,从Moodle学习平台中的实际课程中提取数据集。该课程有105名学生在12个月中与252个学习对象互动。使用Felder-Silverman的经典模型描述了学习风格。根据使用这些数据的实验结果,单一的机器学习算法无法得出可预测精度与现有替代模型相当的模型。但是,将来自不同算法的模型组合在一起时,有可能获得优于相关文献中报道的预测精度。

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