元认知
学习分析
背景(考古学)
任务(项目管理)
计算机科学
自主学习
联想(心理学)
机器学习
心理学
认知
数学教育
工程类
生物
古生物学
神经科学
系统工程
心理治疗师
作者
Namrata Srivastava,Yizhou Fan,Mladen Raković,Shaveen Singh,Jelena Jovanović,Joep van der Graaf,Lyn Lim,Surya Surendrannair,Jonathan Kilgour,Inge Molenaar,Maria Bannert,Johanna D. Moore,Dragan Gašević
标识
DOI:10.1145/3506860.3506972
摘要
Self-regulated learning (SRL) skills are essential for successful learning in a technology-enhanced learning environment. Learning Analytics techniques have shown a great potential in identifying and exploring SRL strategies from trace data in various learning environments. However, these strategies have been mainly identified through analysis of sequences of learning actions, and thus interpretation of the strategies is heavily task and context dependent. Further, little research has been done on the association of SRL strategies with different influencing factors or conditions. To address these gaps, we propose an analytic method for detecting SRL strategies from theoretically supported SRL processes and applied the method to a dataset collected from a multi-source writing task. The detected SRL strategies were explored in terms of their association with the learning outcome, internal conditions (prior-knowledge, metacognitive knowledge and motivation) and external conditions (scaffolding). The study results showed our analytic method successfully identified three theoretically meaningful SRL strategies. The study results revealed small effect size in the association between the internal conditions and the identified SRL strategies, but revealed a moderate effect size in the association between external conditions and the SRL strategy use.
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