Proceedings of the 14th Learning Analytics and Knowledge Conference 2024
DOI: 10.1145/3636555.3636911
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Using Think-Aloud Data to Understand Relations between Self-Regulation Cycle Characteristics and Student Performance in Intelligent Tutoring Systems

Conrad Borchers,
Jiayi Zhang,
Ryan S. Baker
et al.

Abstract: Numerous studies demonstrate the importance of self-regulation during learning by problem-solving. Recent work in learning analytics has largely examined students' use of SRL concerning overall learning gains. Limited research has related SRL to in-the-moment performance differences among learners. The present study investigates SRL behaviors in relationship to learners' moment-by-moment performance while working with intelligent tutoring systems for stoichiometry chemistry. We demonstrate the feasibility of l… Show more

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Cited by 3 publications
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