用于不同难度概念和问题并发智能辅导的分层多臂匪帮

Blake Castleman, Uzay Macar, Ansaf Salleb-Aouissi
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引用次数: 0

摘要

二十一世纪,远程教育如雨后春笋般涌现,智能辅导系统也应运而生。特别是,研究发现多臂带位(MAB)智能导师在为学生推荐问题时具有显著的探索-开发权衡能力。然而,先前的文献中严重缺乏开源的 MAB 智能辅导员,这阻碍了这些教育 MAB 推荐系统的潜在应用。在本文中,我们将有关人机对话智能辅导技术的最新文献结合到一个开源且可简单部署的分层人机对话算法中,该算法能够让学生同时学习概念和问题,确定理想的推荐问题难度,并评估潜在记忆衰减。我们利用贝叶斯知识追踪来评估学生对内容的掌握程度,并使用 500 名学生组成的模拟组来评估我们的算法。结果表明,我们的算法在与难度无关的情况下能显著提高学生的成功率,而进一步增加问题难度适应性则能明显改善这一指标。
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Hierarchical Multi-Armed Bandits for the Concurrent Intelligent Tutoring of Concepts and Problems of Varying Difficulty Levels
Remote education has proliferated in the twenty-first century, yielding rise to intelligent tutoring systems. In particular, research has found multi-armed bandit (MAB) intelligent tutors to have notable abilities in traversing the exploration-exploitation trade-off landscape for student problem recommendations. Prior literature, however, contains a significant lack of open-sourced MAB intelligent tutors, which impedes potential applications of these educational MAB recommendation systems. In this paper, we combine recent literature on MAB intelligent tutoring techniques into an open-sourced and simply deployable hierarchical MAB algorithm, capable of progressing students concurrently through concepts and problems, determining ideal recommended problem difficulties, and assessing latent memory decay. We evaluate our algorithm using simulated groups of 500 students, utilizing Bayesian Knowledge Tracing to estimate students' content mastery. Results suggest that our algorithm, when turned difficulty-agnostic, significantly boosts student success, and that the further addition of problem-difficulty adaptation notably improves this metric.
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