Effectiveness of a Learning Analytics Dashboard for Increasing Student Engagement Levels

IF 2.9 Q1 EDUCATION & EDUCATIONAL RESEARCH Journal of Learning Analytics Pub Date : 2023-12-12 DOI:10.18608/jla.2023.7935
Gomathy Ramaswami, Teo Susnjak, A. Mathrani
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Abstract

Learning Analytics Dashboards (LADs) are gaining popularity as a platform for providing students with insights into their learning behaviour patterns in online environments. Existing LAD studies are mainly centred on displaying students’ online behaviours with simplistic descriptive insights. Only a few studies have integrated predictive components, while none possess the ability to explain how the predictive models work and how they have arrived at specific conclusions for a given student. A further gap exists within existing LADs with respect to prescriptive analytics that generate data-driven feedback to students on how to adjust their learning behaviour. The LAD in this study attempts to address this gap and integrates a full spectrum of current analytics technologies for sense-making while anchoring them within theoretical educational frameworks. This study’s LAD (SensEnablr) was evaluated for its effectiveness in impacting learning in a student cohort at a tertiary institution. Our findings demonstrate that student engagement with learning technologies and course resources increased significantly immediately following interactions with the dashboard. Meanwhile, results showed that the dashboard boosted the respondents’ learning motivation levels and that the novel analytics insights drawn from predictive and prescriptive analytics were beneficial to their learning. This study, therefore, has implications for future research when investigating student outcomes and optimizing student learning using LAD technologies.
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学习分析仪表板在提高学生参与度方面的效果
学习分析仪表板(LADs)作为一个为学生提供在线环境下学习行为模式洞察的平台,正日益受到欢迎。现有的学习分析仪表板研究主要集中在显示学生的在线行为,并提供简单的描述性见解。只有少数研究整合了预测成分,而没有一项研究有能力解释预测模型是如何工作的,以及它们是如何针对特定学生得出具体结论的。在现有的 LAD 中,还存在着另一个空白,即如何向学生提供数据驱动的反馈,让他们知道如何调整自己的学习行为。本研究中的 LAD 试图弥补这一不足,它整合了当前用于感知生成的各种分析技术,同时将它们锚定在理论教育框架内。本研究对 LAD(SensEnablr)在影响高等院校学生学习方面的有效性进行了评估。我们的研究结果表明,在与仪表板互动后,学生对学习技术和课程资源的参与度立即大幅提高。同时,研究结果表明,仪表板提高了受访者的学习积极性,从预测性和规范性分析中获得的新颖分析见解也有利于他们的学习。因此,本研究对今后利用学习与发展(LAD)技术调查学生成果和优化学生学习的研究具有启示意义。
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
Journal of Learning Analytics
Journal of Learning Analytics Social Sciences-Education
CiteScore
7.40
自引率
5.10%
发文量
25
期刊最新文献
Generative AI and Learning Analytics NLP-Based Management of Large Multiple-Choice Test Item Repositories Session-Based Time-Window Identification in Virtual Learning Environments Effectiveness of a Learning Analytics Dashboard for Increasing Student Engagement Levels Bayesian Generative Modelling of Student Results in Course Networks
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