Heather Pon-Barry, B. Clark, Karl Schultz, Elizabeth Owen Bratt, S. Peters
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引用次数: 9
摘要
由于多种原因,在智能辅导系统中情境化学习是困难的。以一种可理解的方式呈现材料、尽量减少困惑和沮丧、帮助学生理解他们的行为等目标都需要平衡。先前的研究表明,在解决问题后进行的反思性讨论(与人类导师)可以有效地帮助学生对自己的行为进行推理(S. Katz et. al ., 2003)。然而,引导一个反思性的讨论很难以一种可理解的方式呈现信息,而且没有语境化,很容易让学生感到困惑和沮丧。这就提出了一个问题:智能辅导系统如何在反思性讨论中有效地将学习情境化?在本文中,我们描述了SCoT的教学体系结构,SCoT是一种口语会话导师,它使用灵活的、自适应的计划和多模态任务建模来支持反思性对话中的学习情境化。
Contextualizing learning in a reflective conversational tutor
Contextualizing learning in an intelligent tutoring system is difficult for many reasons. Goals such as presenting material in an understandable manner, minimizing confusion and frustration, and helping the student reason about their actions all need to be balanced. Previous research has shown reflective discussions (with human tutors) occurring after problem-solving to be effective in helping students reason about their own actions (S. Katz et. al, 2003). However, leading a reflective discussion makes it difficult to present information in an understandable manner, and without contextualization, it is easy to create student confusion and frustration. This raises the question: how can intelligent tutoring systems effectively contextualize learning in a reflective discussion? In this paper, we describe the tutorial architecture of SCoT, a spoken conversational tutor that uses flexible, adaptive planning and multi-modal task modeling to support the contextualization of learning in reflective dialogues.