Skill Diaries: Improve Student Learning in an Intelligent Tutoring System with Periodic Self-Assessment

نویسندگان

  • Yanjin Long
  • Vincent Aleven
چکیده

According to Self-Regulated Learning theories, self-assessment by students can facilitate in-depth reflection and help direct effective self-regulated learning. Yet, not much work has investigated the relation between students’ self-assessment and learning outcomes in Intelligent Tutoring Systems (ITSs). This paper investigates this relation with classrooms using the Geometry Cognitive Tutor. We designed a paper-based skill diary that helps students take advantage of the tutor’s Open Learner Model to self-assess their problem-solving skills periodically, and investigated whether it can support students’ selfassessment and learning. In an experiment with 122 high school students, students in the experimental group were prompted periodically to fill out the skill diaries, whereas the control group answered general questions that did not involve active self-assessment. The experimental group performed better on the post-test, and the skill diaries helped lower-performing students to significantly improve their learning outcomes and self-assessment accuracy. This work is among the first empirical studies that successfully establish the beneficial role of self-assessment in students’ learning of problem-solving tasks in ITSs.

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Skill Diaries: Can Periodic Self-assessment Improve Students' Learning with an Intelligent Tutoring System?

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تاریخ انتشار 2013