Network Analytics to Unveil Links of Learning Strategies, Time Management, and Academic Performance in a Flipped Classroom

IF 2.9 Q1 EDUCATION & EDUCATIONAL RESEARCH Journal of Learning Analytics Pub Date : 2023-11-01 DOI:10.18608/jla.2023.7843
Mladen Rakovic, Nora'ayu Ahmad Uzir, Wannisa Matcha, Dragan Gašević, Brendan Eagan, Jelena Jovanović, David Williamson Shaffer, Abelardo Pardo
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Abstract

Preparatory learning tasks are considered critical for student success in flipped classroom courses. However, less isknown regarding which learning strategies students use and when they use those strategies in a flipped classroomcourse. In this study, we aimed to address this research gap. In particular, we investigated mutual connectionsbetween learning strategies and time management, and their combined effects on students’ performance in flippedclassrooms. To this end, we harnessed a network analytic approach based on epistemic network analysis (ENA) toanalyze student trace data collected in an undergraduate engineering course (N = 290) with a flipped classroomdesign. Our findings suggest that high-performing students effectively used their study time and enacted learningstrategies mainly linked to formative and summative assessment tasks. The students in the low-performing groupenacted less diverse learning strategies and typically focused on video watching. We discuss several implicationsfor research and instructional practice.
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网络分析揭示学习策略、时间管理和学习成绩在翻转课堂中的联系
预备学习任务被认为是学生在翻转课堂课程中取得成功的关键。然而,关于学生在翻转课堂课程中使用哪些学习策略以及何时使用这些策略,我们知之甚少。在本研究中,我们旨在解决这一研究空白。特别是,我们调查了学习策略和时间管理之间的相互联系,以及它们对学生在翻转教室中的表现的综合影响。为此,我们利用基于认知网络分析(ENA)的网络分析方法来分析在翻转课堂设计的本科生工程课程(N = 290)中收集的学生跟踪数据。我们的研究结果表明,表现优异的学生有效地利用了他们的学习时间,并制定了主要与形成性和总结性评估任务相关的学习策略。表现不佳的一组学生的学习策略较少,通常集中在看视频上。我们讨论了对研究和教学实践的几点启示。
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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
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