学习策略分析:与学习成绩和反馈的关系

W. Matcha, D. Gašević, Nora'ayu Ahmad Uzir, J. Jovanović, A. Pardo
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引用次数: 90

摘要

学习分析有可能通过分析跟踪数据来检测和解释学习策略的特征,并通过反馈来传达发现。然而,基于学习分析的反馈在学习策略的选择和调节中的作用仍然没有得到充分的探索和理解。本研究旨在探讨学习策略的时序特征和时间特征,以及它们与反馈的关系。从翻转课堂的在线课前活动中收集了三年的跟踪数据,每年采用不同类型的反馈。聚类、序列挖掘和过程挖掘用于检测和解释学习策略和策略。采用推理统计的方法检验反馈与学习绩效和被检测的学习策略之间的关系。结果表明,个性化反馈与有效策略之间存在正相关关系。
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Analytics of Learning Strategies: Associations with Academic Performance and Feedback
Learning analytics has the potential to detect and explain characteristics of learning strategies through analysis of trace data and communicate the findings via feedback. However, the role of learning analytics-based feedback in selection and regulation of learning strategies is still insufficiently explored and understood. This research aims to examine the sequential and temporal characteristics of learning strategies and investigate their association with feedback. Three years of trace data were collected from online pre-class activities of a flipped classroom, where different types of feedback were employed in each year. Clustering, sequence mining, and process mining were used to detect and interpret learning tactics and strategies. Inferential statistics were used to examine the association of feedback with the learning performance and the detected learning strategies. The results suggest a positive association between the personalised feedback and the effective strategies.
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