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Optimal Hierarchical Learning Path Design With Reinforcement Learning

Xiao Li, Hanchen Xu, Jinming Zhang, Hua-Hua Chang

2020Applied Psychological Measurement13 citationsDOIOpen Access PDF

Abstract

E-learning systems are capable of providing more adaptive and efficient learning experiences for learners than traditional classroom settings. A key component of such systems is the learning policy. The learning policy is an algorithm that designs the learning paths or rather it selects learning materials for learners based on information such as the learners' current progresses and skills, learning material contents. In this article, the authors address the problem of finding the optimal learning policy. To this end, a model for learners' hierarchical skills in the E-learning system is first developed. Based on the hierarchical skill model and the classical cognitive diagnosis model, a framework to model various mastery levels related to hierarchical skills is further developed. The optimal learning path in consideration of the hierarchical structure of skills is found by applying a model-free reinforcement learning method, which does not require any assumption about learners' learning transition processes. The effectiveness of the proposed framework is demonstrated via simulation studies.

Topics & Concepts

Reinforcement learningComputer scienceComponent (thermodynamics)Path (computing)Artificial intelligenceProactive learningActive learning (machine learning)Key (lock)Adaptive learningMachine learningExperiential learningRobot learningMathematics educationPsychologyComputer securityRobotThermodynamicsMobile robotPhysicsProgramming languageIntelligent Tutoring Systems and Adaptive LearningOnline Learning and AnalyticsReinforcement Learning in Robotics
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