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Building Adaptive Tutoring Model Using Artificial Neural Networks and Reinforcement Learning

机译:使用人工神经网络和强化学习构建自适应辅导模型

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With the emergence of new technology-supported learning environments (e.g., MOOCs, mobile edu games), efficient and effective tutoring mechanisms remain relevant beyond traditional intelligent tutoring systems. This paper provides an approach to build and adapt a tutoring model by using both artificial neural networks and reinforcement learning. The underlying idea is that tutoring rules can be, firstly, learned by observing human tutors' behavior and, then, adapted, at run-time, by observing how each learner reacts within a learning environment at different states of the learning process. The Zone of Proximal Development has been adopted as the underlying theory to evaluate efficacy and efficiency of the learning experience.
机译:随着新的技术支持的学习环境(例如,MOOC,移动教育游戏)的出现,高效而有效的补习机制仍然比传统的智能补习系统重要。本文提供了一种通过使用人工神经网络和强化学习来构建和调整辅导模型的方法。其基本思想是,可以首先通过观察人类导师的行为来学习导师规则,然后在运行时通过观察每个学习者在学习过程中处于不同学习状态时的反应来适应他们。最近发展区已被用作评估学习经验的功效和效率的基础理论。

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