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Analysis of student behavior in learning management systems through a Big Data framework

机译:通过大数据框架分析学习管理系统中的学生行为

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In recent years, learning management systems (LMSs) have played a fundamental role in higher education teaching models. A new line of research has been opened relating to the analysis of student behavior within an LMS, in the search for patterns that improve the learning process. Current e-learning platforms allow for recording student activity, thereby enabling the exploration of events generated in the use of LMS tools. This paper presents a case study conducted at the Catholic University of Murcia, where student behavior in the past four academic years was analyzed according to learning modality (that is, on-campus, online, and blended), considering the number of accesses to the LMS, tools employed by students and their associated events. Given the difficulty of managing the large volume of data generated by users in the LMS (up to 70 GB in this study), statistical and association rule techniques were performed using a Big Data framework, thus speeding up the statistical analysis of the data. The obtained results are demonstrated using visual analytic techniques, and evaluated in order to detect trends and deficiencies in the use of the LMS by students. (C) 2018 Elsevier B.V. All rights reserved.
机译:近年来,学习管理系统(LMS)在高等教育教学模型中发挥了重要作用。一项新的研究领域已经开始,它涉及在LMS中分析学生的行为,以寻找改善学习过程的模式。当前的电子学习平台可以记录学生的活动,从而可以探索使用LMS工具生成的事件。本文介绍了一个在穆尔西亚天主教大学进行的案例研究,其中根据学习方式(校园,在线和混合)对过去四个学年的学生行为进行了分析,并考虑了访问该课程的次数。 LMS,学生使用的工具及其相关事件。鉴于在LMS中管理由用户生成的大量数据的困难(在本研究中为70 GB),因此使用大数据框架执行统计和关联规则技术,从而加快了数据的统计分析。使用视觉分析技术演示了获得的结果,并对结果进行了评估,以发现学生使用LMS的趋势和不足。 (C)2018 Elsevier B.V.保留所有权利。

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