神经适应性辅导系统-基于神经生理学的情感-情绪和认知状态的识别学习者的智能神经适应性辅导系统

Katharina Lingelbach, Sabrina Gado, Wilhelm Bauer
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引用次数: 0

摘要

通过被动脑机接口(BCI)监测学习者的心理状态,可以持续评估当前的能力、可用的认知资源和动机。通过智能辅导系统,使教育内容、学习速度和形式适应学习者的需要,具有很大的潜力。我们提出了一种基于神经生理学的方法,通过被动脑机接口测量和解码大脑活动,持续监测学习者当前的情感-情绪和认知状态。在两项研究(N = 8和N = 7)中,我们探讨了我们是否可以a)预测学习者在学习或训练过程中的情感和认知状态,b)向学习者提供持续的识别状态反馈,从而c)提高绩效和内在动机。α (8 - 12 Hz)和θ (4 - 7 Hz)频段的振荡功率测量作为预测和可视化的特征。我们的研究结果表明,机器学习算法可以区分不同的认知负荷和影响状态。该方法有助于闭环神经自适应辅导系统的发展,该系统允许监控学习者的状态,提供反馈,并调整其参数以获得最佳的学习者-训练拟合和有效和积极的学习体验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neuro-adaptive tutoring systems - Neurophysiological-based recognition of affective-emotional and cognitive states of learners for intelligent neuro-adaptive tutoring systems
Monitoring learners’ mental states via a passive Brain-Computer Interface (BCI) allows to continuously estimate current abilities, available cognitive resources, and motivation. It bears the great potential to adapt educational contents, learning speed, and format to the learner’s needs via an intelligent tutoring system. We present a neurophysiological-based approach to continuously monitor learners’ current affective-emotional and cognitive states by measuring and decoding brain activity via a passive BCI. In two studies (N = 8 and N = 7), we investigate whether we can a) predict learners’ affective and cognitive states during a learning or training session, b) provide continuous feedback of recognized states to the learner and, thereby, c) increase performance and intrinsic motivation. Oscillatory power measures in the alpha (8 – 12 Hz) and theta (4 – 7 Hz) frequency band served as features for the prediction and visualization. Our results reveal that machine learning algorithms can distinguish different states of cognitive workload and affect. The approach contributes to the development of closed-loop neuro-adaptive tutoring systems which allow to monitor learners’ states, provide feedback, and adapt their parameters for an optimal learner-training fit and effective and positive learning experience.
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