| Literature DB >> 30277574 |
Xueying Tang1, Yunxiao Chen2, Xiaoou Li3, Jingchen Liu1, Zhiliang Ying1.
Abstract
Personalized learning refers to instruction in which the pace of learning and the instructional approach are optimized for the needs of each learner. With the latest advances in information technology and data science, personalized learning is becoming possible for anyone with a personal computer, supported by a data-driven recommendation system that automatically schedules the learning sequence. The engine of such a recommendation system is a recommendation strategy that, based on data from other learners and the performance of the current learner, recommends suitable learning materials to optimize certain learning outcomes. A powerful engine achieves a balance between making the best possible recommendations based on the current knowledge and exploring new learning trajectories that may potentially pay off. Building such an engine is a challenging task. We formulate this problem within the Markov decision framework and propose a reinforcement learning approach to solving the problem.Keywords: Markov decision; adaptive learning; personalized learning; reinforcement learning; sequential design
Mesh:
Year: 2018 PMID: 30277574 DOI: 10.1111/bmsp.12144
Source DB: PubMed Journal: Br J Math Stat Psychol ISSN: 0007-1102 Impact factor: 3.380