基于脑电图数据的MOOC性能进化在线框架

A. Tahmassebi, A. Gandomi, A. Meyer-Bäse
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引用次数: 11

摘要

大规模在线开放课程(MOOC)是一种可扩展、免费或价格合理的在线课程,在过去十年中成为发展最快的远程教育平台之一。远程教育面临的最大挑战之一是学生在学习过程中的整体意识水平不正常。本文提出了一个进化的在线框架,通过脑电图(EEG)等无创电生理监测方法来提高mooc的性能。基于所提出的平台,用户可以在佩戴任何脑电图耳机时记录脑电图信号。EEG通过放置在头皮上的多个电极测量大脑神经元内离子电流产生的自发电压波动。从脑电信号中提取的11个特征作为进化分类算法的输入,对每个个体进行两类混淆和非混淆的预测。89%的准确度被认为是显著的,足以表明有混淆的个体和没有混淆的个体的脑电图信号是不同的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Evolutionary Online Framework for MOOC Performance Using EEG Data
Massive Online Open Course (MOOC) is a scalable, free or affordable online course which emerged as one of the fastest growing distance education platforms in the past decade. One of the biggest challenges that threatens distance education is abnormality in the overall level of consciousness of students while they are taking the course. In this paper, an evolutionary online framework was proposed to improve the performance of MOOCs via noninvasive electro-physiological monitoring methods such as electroencephalography (EEG). Based on the proposed platform, EEG signals can be recorded from users while they are wearing any EEG headsets. EEG measures a brain's spontaneous voltage fluctuations resulting from ionic current within the neurons of the brain via multiple electrodes placed on the scalp. A total of eleven extracted features from EEG signals were employed as the inputs of the evolutionary classification algorithm to predict two classes of confused and not-confused for each individual. An accuracy of 89 % was considered significant enough to suggest that there is difference in the EEG signals of individuals with confusion versus not-confused individuals.
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