CYAILGJun 21, 2025

Optimizing Mastery Learning by Fast-Forwarding Over-Practice Steps

arXiv:2506.17577v13 citationsh-index: 8EC-TE
Originality Incremental advance
AI Analysis

This addresses efficiency in tutoring systems for students, though it is incremental as it enhances existing problem selection algorithms.

The paper tackles the problem of overpractice in mastery learning by introducing Fast-Forwarding, a step-level adaptive technique that reduces overpractice by up to one-third in simulations based on real student data.

Mastery learning improves learning proficiency and efficiency. However, the overpractice of skills--students spending time on skills they have already mastered--remains a fundamental challenge for tutoring systems. Previous research has reduced overpractice through the development of better problem selection algorithms and the authoring of focused practice tasks. However, few efforts have concentrated on reducing overpractice through step-level adaptivity, which can avoid resource-intensive curriculum redesign. We propose and evaluate Fast-Forwarding as a technique that enhances existing problem selection algorithms. Based on simulation studies informed by learner models and problem-solving pathways derived from real student data, Fast-Forwarding can reduce overpractice by up to one-third, as it does not require students to complete problem-solving steps if all remaining pathways are fully mastered. Fast-Forwarding is a flexible method that enhances any problem selection algorithm, though its effectiveness is highest for algorithms that preferentially select difficult problems. Therefore, our findings suggest that while Fast-Forwarding may improve student practice efficiency, the size of its practical impact may also depend on students' ability to stay motivated and engaged at higher levels of difficulty.

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