Investigating learning strategies in a dispositional learning analytics context: the case of worked examples

Dirk T. Tempelaar, B. Rienties, Quan Nguyen
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引用次数: 16

Abstract

This study aims to contribute to recent developments in empirical studies on students' learning strategies, whereby the use of trace data is combined with self-report data to distinguish profiles of learning strategy use [3--5]. We do so in the context of an application of dispositional learning analytics in a large introductory course mathematics and statistics, based on blended learning. Building on our previous work which showed marked differences in how students used worked examples as a learning strategy [7, 11], this study compares different profiles of learning strategies with learning approaches, learning outcomes, and learning dispositions. One of our key findings is that deep learners were less dependent on worked examples as a resource for learning, and that students who only sporadically used worked examples achieved higher test scores.
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在性格学习分析的背景下调查学习策略:工作实例的情况
本研究旨在为学生学习策略实证研究的最新发展做出贡献,将追踪数据的使用与自我报告数据相结合,以区分学习策略使用的概况[3- 5]。我们在一个基于混合学习的大型数学和统计学入门课程中应用性格学习分析的背景下这样做。我们之前的研究表明,学生使用工作实例作为学习策略的方式存在显著差异[7,11],在此基础上,本研究比较了学习策略与学习方法、学习成果和学习倾向的不同概况。我们的主要发现之一是,深度学习者较少依赖于工作示例作为学习资源,并且只偶尔使用工作示例的学生获得了更高的考试成绩。
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