戴上你的思考帽:在学习过程中使用脑电图检测认知负荷

Caitlin Mills, Igor Fridman, W. Soussou, Disha Waghray, A. Olney, S. D’Mello
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引用次数: 47

摘要

目前的学习技术没有直接的方法来评估学生的精神努力:他们是在深思熟虑,努力克服僵局,还是走神?为了解决这一挑战,我们建议在学习过程中使用基于脑电图的认知负荷检测器。尽管具有潜力,脑电图尚未被用作优化教学策略的一种方法。我们通过评估智能辅导系统(ITS)的实验操作(简单和困难)部分如何影响基于脑电图的学生认知负荷估计,向这一目标迈出了第一步。我们发现任务难度对基于脑电图的认知负荷估计有主要影响,这也与学习表现相关。我们的研究结果表明,脑电图可以作为一个可行的数据来源来模拟学习者在90分钟的学习过程中的心理状态。
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Put your thinking cap on: detecting cognitive load using EEG during learning
Current learning technologies have no direct way to assess students' mental effort: are they in deep thought, struggling to overcome an impasse, or are they zoned out? To address this challenge, we propose the use of EEG-based cognitive load detectors during learning. Despite its potential, EEG has not yet been utilized as a way to optimize instructional strategies. We take an initial step towards this goal by assessing how experimentally manipulated (easy and difficult) sections of an intelligent tutoring system (ITS) influenced EEG-based estimates of students' cognitive load. We found a main effect of task difficulty on EEG-based cognitive load estimates, which were also correlated with learning performance. Our results show that EEG can be a viable source of data to model learners' mental states across a 90-minute session.
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