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Using Learner Data to Influence Performance during Adaptive Tutoring Experiences

机译:在自适应教学经验中使用学习者数据影响绩效

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During computer-based tutoring sessions, Intelligent Tutoring Systems (ITSs) adapt planning and manage real-time instructional decisions. The link between learner data and enhanced performance is the adaptive tutoring learning effect chain through which learner data informs learner state classification which in turn informs optimal instructional decisions to enhance performance. This paper examines the roles and influence of learner data in both short-term (also called run-time or session) and long-term (also called persistent) learner models used to support adaptive tutoring decisions within the Generalized Intelligent Framework for Tutoring (GIFT). To enhance the usability of tutoring systems and learner performance, recommendations for the design of future learner models are also presented.
机译:在基于计算机的辅导课程中,智能辅导系统(ITS)会调整计划并管理实时指导性决策。学习者数据与增强性能之间的联系是自适应补习学习效果链,学习者数据通过该链来告知学习者状态分类,进而告知最佳教学决策以提高性能。本文研究了学习者数据在短期(也称为运行时或会话)和长期(也称为持久性)学习者模型中的作用和影响,这些模型用于支持通用智能辅导框架(GIFT)中的自适应辅导决策)。为了提高补习系统的可用性和学习者的表现,还提出了有关未来学习者模型设计的建议。

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