Personalized visualizations to promote young learners' SRL: the learning path app

I. Molenaar, A. Horvers, R. Dijkstra, R. Baker
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引用次数: 29

Abstract

This paper describes the design and evaluation of personalized visualizations to support young learners' Self-Regulated Learning (SRL) in Adaptive Learning Technologies (ALTs). Our learning path app combines three Personalized Visualizations (PV) that are designed as an external reference to support learners' internal regulation process. The personalized visualizations are based on three pillars: grounding in SRL theory, the usage of trace data and the provision of clear actionable recommendations for learners to improve regulation. This quasi-experimental pre-posttest study finds that learners in the personalized visualization condition improved the regulation of their practice behavior, as indicated by higher accuracy and less complex moment-by-moment learning curves compared to learners in the control group. Learners in the PV condition showed better transfer on learning. Finally, students in the personalized visualizations condition were more likely to under-estimate instead of over-estimate their performance. Overall, these findings indicates that the personalized visualizations improved regulation of practice behavior, transfer of learning and changed the bias in relative monitoring accuracy.
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个性化可视化,促进年轻学习者的SRL:学习路径应用
本文描述了个性化可视化的设计和评估,以支持青少年学习者在适应性学习技术(ALTs)中的自我调节学习(SRL)。我们的学习路径应用程序结合了三个个性化可视化(PV),旨在作为外部参考来支持学习者的内部调节过程。个性化可视化基于三个支柱:SRL理论的基础,跟踪数据的使用以及为学习者提供明确的可操作建议以改进监管。这项准实验前-后测试研究发现,个性化可视化条件下的学习者对练习行为的调节有所改善,表现为与对照组相比,学习者的学习精度更高,每一刻的学习曲线更简单。在PV条件下,学习者表现出更好的学习迁移。最后,个性化可视化条件下的学生更有可能低估而不是高估他们的表现。总体而言,这些发现表明个性化可视化改善了练习行为的调节,学习迁移和改变了相对监测准确性的偏差。
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