Walter Carina, Rosenstiel Wolfgang, Bogdan Martin, Gerjets Peter, Spüler Martin
Department of Computer Engineering, Eberhard-Karls University TübingenTübingen, Germany.
Department of Computer Engineering, University of LeipzigLeipzig, Germany.
Front Hum Neurosci. 2017 May 30;11:286. doi: 10.3389/fnhum.2017.00286. eCollection 2017.
In this paper, we demonstrate a closed-loop EEG-based learning environment, that adapts instructional learning material online, to improve learning success in students during arithmetic learning. The amount of cognitive workload during learning is crucial for successful learning and should be held in the optimal range for each learner. Based on EEG data from 10 subjects, we created a prediction model that estimates the learner's workload to obtain an unobtrusive workload measure. Furthermore, we developed an interactive learning environment that uses the prediction model to estimate the learner's workload online based on the EEG data and adapt the difficulty of the learning material to keep the learner's workload in an optimal range. The EEG-based learning environment was used by 13 subjects to learn arithmetic addition in the octal number system, leading to a significant learning effect. The results suggest that it is feasible to use EEG as an unobtrusive measure of cognitive workload to adapt the learning content. Further it demonstrates that a promptly workload prediction is possible using a generalized prediction model without the need for a user-specific calibration.
在本文中,我们展示了一种基于脑电图(EEG)的闭环学习环境,该环境可在线调整教学学习材料,以提高学生在算术学习过程中的学习成功率。学习过程中的认知工作量对于成功学习至关重要,并且应为每个学习者保持在最佳范围内。基于10名受试者的脑电图数据,我们创建了一个预测模型,该模型可估计学习者的工作量,以获得一种非侵入性的工作量测量方法。此外,我们开发了一个交互式学习环境,该环境使用预测模型根据脑电图数据在线估计学习者的工作量,并调整学习材料的难度,以使学习者的工作量保持在最佳范围内。13名受试者使用基于脑电图的学习环境学习八进制系统中的算术加法,产生了显著的学习效果。结果表明,将脑电图用作认知工作量的非侵入性测量方法以调整学习内容是可行的。此外,它还表明,使用通用预测模型无需针对用户进行特定校准即可实现即时工作量预测。