在自适应训练系统中使用POMDP整合学习者帮助请求

J. Folsom-Kovarik, G. Sukthankar, S. Schatz
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引用次数: 2

摘要

本文描述了智能辅导系统(ITS)的开发和实证测试,采用了两种新兴方法:(1)部分可观察的马尔可夫决策过程(POMDP)来表示学习者模型;(2)查询建模,它将学习者在教学过程中提出的问题告知学习者模型。pomdp已成功应用于非its领域,但直到最近,对于大规模智能辅导挑战似乎难以解决。新的,特定于its的表示利用智能辅导的共同规律,使POMDP作为学习者模型实用。探究建模是一种通过观察学习者帮助请求的丰富特征(如分类内容、上下文和时间)来告知学习者模型的新范式。本文中描述的实验表明,使用pomdp进行查询建模和规划可以在现实的、基于场景的训练任务中产生显著的、实质性的学习改进。
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Integrating Learner Help Requests Using a POMDP in an Adaptive Training System
This paper describes the development and empirical testing of an intelligent tutoring system (ITS) with two emerging methodologies: (1) a partially observable Markov decision process (POMDP) for representing the learner model and (2) inquiry modeling, which informs the learner model with questions learners ask during instruction. POMDPs have been successfully applied to non-ITS domains but, until recently, have seemed intractable for large-scale intelligent tutoring challenges. New, ITS-specific representations leverage common regularities in intelligent tutoring to make a POMDP practical as a learner model. Inquiry modeling is a novel paradigm for informing learner models by observing rich features of learners’ help requests such as categorical content, context, and timing. The experiment described in this paper demonstrates that inquiry modeling and planning with POMDPs can yield significant and substantive learning improvements in a realistic, scenario-based training task.
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