A Comprehensive Survey on Usage of Learning Analytics for Enhancing Learner's Performance in Learning Portals

Shabnam Ara S.J, R. Tanuja, S. Manjula, K. Venugopal
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Abstract

Learning analytics (LA) is considered a promising field of study as it's helping to improve learning and the context in which it occurs. A learner's performance can be defined as how well students are learning in terms of knowledge and skills development and can be analyzed based on students’ outcomes and engagement in the course. We have consolidated the work carried out from 2011 to 2022 to improve learners’ performance using LA, describe criteria that define learners’ performance, discuss parameters that impact learners’ performance, and how predictive models can be created to forecast learners’ performance using these parameters. Results showed that the data collected from log files of the Learning Management System (LMS) had been used to get insights into the learner's performance in online platforms and LA could bring incredible benefits in the field of the education sector, such as improvement of learners’ involvement with learning activities as well as learning outcomes, identification of students at risk, providing real-time feedback, and personalization of learning. Hence, we can say usage of LA significantly helps learners’ performance improvement in learning portals. But we can get better results if we augment data from log files of LMS with the learner's personal data from his birth to the current moment, which is a bit challenging with respect to data collection i.e., huge and from multiple sources.
在学习门户网站中使用学习分析提高学习者绩效的综合调查
学习分析(LA)被认为是一个很有前途的研究领域,因为它有助于改善学习及其发生的环境。学习者的表现可以定义为学生在知识和技能发展方面的学习情况,并可以根据学生的成果和对课程的参与来分析。我们整合了从2011年到2022年开展的工作,使用LA来提高学习者的表现,描述了定义学习者表现的标准,讨论了影响学习者表现的参数,以及如何使用这些参数创建预测模型来预测学习者的表现。结果表明,从学习管理系统(LMS)的日志文件中收集的数据已被用于了解学习者在在线平台上的表现,学习管理系统可以在教育领域带来令人难以置信的好处,例如提高学习者对学习活动和学习成果的参与,识别有风险的学生,提供实时反馈,以及个性化学习。因此,我们可以说LA的使用显著地帮助学习者在学习门户中的绩效提高。但是,如果我们将LMS日志文件中的数据与学习者从出生到现在的个人数据相结合,我们可以得到更好的结果,这在数据收集方面有点挑战,即庞大且来自多个来源。
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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