How Does a Data-Informed Deliberate Change in Learning Design Impact Students’ Self-Regulated Learning Tactics?

Zhongzhou Chen, Tom Zhang, M. Taub
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Abstract

The current study measures the extent to which students’ self-regulated learning tactics and learning outcomes change as the result of a deliberate, data-driven improvement in the learning design of mastery-based online learning modules. In the original design, students were required to attempt the assessment once before being allowed to access the learning material. The improved design gave students the choice to skip the first attempt and access the learning material directly. Student learning tactics were measured using a multi-level clustering and process mining algorithm, and a quasi-experiment design was implemented to remove or reduce differences in extraneous factors, including content being covered, time of implementation, and naturally occurring fluctuations in student learning tactics. The analysis suggests that most students who chose to skip the first attempt were effectively self-regulating their learning and were thus successful in learning from the instructional materials. Students who would have failed the first attempt were much more likely to skip it than those who would have passed the first attempt. The new design also resulted in a small improvement in learning outcome and median learning time. The study demonstrates the creation of a closed loop between learning design and learning analytics: first, using learning analytics to inform improvements to the learning design, then assessing the effectiveness and impact of the improvements.
根据数据有意改变学习设计如何影响学生的自我调节学习策略?
本研究测量了学生的自我调节学习策略和学习成果因基于掌握的在线学习模块的学习设计的有意、数据驱动的改进而发生变化的程度。在最初的设计中,学生必须先尝试一次评估,然后才能访问学习材料。改进后的设计让学生可以选择跳过第一次尝试,直接获取学习材料。使用多级聚类和过程挖掘算法对学生的学习策略进行了测量,并采用了准实验设计,以消除或减少无关因素的差异,包括所涵盖的内容、实施时间以及学生学习策略的自然波动。分析表明,大多数选择跳过第一次尝试的学生都能有效地自我调节学习,从而成功地学习了教学材料。与通过首次尝试的学生相比,未能通过首次尝试的学生跳过首次尝试的可能性要大得多。新设计还使学习效果和学习时间中位数略有提高。这项研究展示了学习设计和学习分析之间的闭环:首先,利用学习分析为学习设计的改进提供信息,然后评估改进的效果和影响。
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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