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Unsupervised and supervised machine learning in user modeling for intelligent learning environments

机译:智能学习环境中用户建模中的无监督和监督机器学习

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In this research, we outline a user modeling framework that uses both unsupervised and supervised machine learning in order to reduce development costs of building user models, and facilitate transferability. We apply the framework to model student learning during interaction with the Adaptive Coach for Exploration (ACE) learning environment (using both interface and eye-tracking data). In addition to demonstrating framework effectiveness, we also compare results from previous research on applying the framework to a different learning environment and data type. Our results also confirm previous research on the value of using eye-tracking data to assess student learning.
机译:在这项研究中,我们概述了一个用户建模框架,该框架使用无监督和受监督的机器学习,以减少构建用户模型的开发成本并促进可移植性。我们将该框架应用于与自适应探索教练(ACE)学习环境(同时使用界面和眼动数据)交互过程中的学生学习模型。除了证明框架的有效性外,我们还比较了以前将框架应用于不同的学习环境和数据类型的研究结果。我们的研究结果也证实了以前关于使用眼动数据评估学生学习价值的研究。

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