Newly Proposed Student Performance Indicators Based on Learning Analytics for Continuous Monitoring in Learning Management Systems

IF 1.7 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Aimad Qazdar, Oussama Hasidi, Sara Qassimi, E. Abdelwahed
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Abstract

E-learning platforms have become increasingly popular across various industries, with higher education institutions being among the primary adopters. Learning management systems (LMSs) have emerged as valuable tools that facilitate the management of learning and training processes while providing support for learning administration. However, LMS platforms often offer limited functionality for monitoring students’ instructional progress, which is essential for understanding how learners interact with courses and materials. As a result, identifying at-risk students, tracking their progress, and intervening when necessary can be challenging. The substantial amount of data generated by LMS platforms can be transformed into meaningful indicators that allow for monitoring learners’ progress and enhancing their self-regulation. Our research project focuses on developing a set of pedagogical indicators using learning analytics to monitor students’ progress. We present a case study where we tracked and monitored the progress of students in the Web Technologies course on the e-campus platform at Cadi Ayyad University (Morocco), using a set of student performance indicators (SPIs). The findings of this study suggest that employing SPIs can help faculty members identify underperforming students, project their progress, and anticipate those at risk, ultimately enabling them to provide timely interventions to support learners’ progress.
基于学习分析的学生绩效指标在学习管理系统中的持续监测
电子学习平台在各个行业越来越受欢迎,高等教育机构是主要采用者之一。学习管理系统(LMS)已成为促进学习和培训过程管理的宝贵工具,同时为学习管理提供支持。然而,LMS平台通常提供有限的功能来监控学生的教学进度,这对于理解学习者如何与课程和材料互动至关重要。因此,识别有风险的学生,跟踪他们的进展,并在必要时进行干预可能具有挑战性。LMS平台生成的大量数据可以转化为有意义的指标,从而监控学习者的进步并增强他们的自我调节能力。我们的研究项目侧重于开发一套教学指标,使用学习分析来监测学生的进步。我们提出了一个案例研究,在该研究中,我们使用一组学生表现指标(SPIs),跟踪和监测了在Cadi Ayyad大学(摩洛哥)电子校园平台上学习网络技术课程的学生的进度。这项研究的结果表明,使用SPIs可以帮助教师识别表现不佳的学生,预测他们的进步,并预测那些有风险的学生,最终使他们能够及时提供干预措施来支持学习者的进步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
4.00
自引率
46.20%
发文量
143
审稿时长
12 weeks
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