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Recognizing Student Emotions using Brainwaves and Mouse Behavior Data

机译:使用脑电波和鼠标行为数据识别学生的情绪

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摘要

Brainwaves (EEG signals) and mouse behavior information are shown to be useful in predicting academic emotions, such as confidence, excitement, frustration and interest. Twenty five college students were asked to use the Aplusix math learning software while their brainwaves signals and mouse behavior (number of clicks, duration of each click, distance traveled by the mouse) were automatically being captured. It is shown that by combining the extracted features from EEG signals with data representing mouse click behavior, the accuracy in predicting academic emotions substantially increases compared to using only features extracted from EEG signals or just mouse behavior alone. Furthermore, experiments were conducted to assess the prediction accuracy of the system at points during the learning session where several of the extracted features significantly deviate in value from their mean. The experiments confirm that the prediction performance increases as the number of feature values that deviate significantly from the mean increases.
机译:脑电波(EEG信号)和鼠标行为信息被证明可用于预测学术情绪,例如自信,兴奋,沮丧和兴趣。 25名大学生被要求使用Aplusix数学学习软件,同时自动捕获他们的脑电信号和鼠标行为(点击次数,每次点击的持续时间,鼠标行进的距离)。结果表明,与仅使用从EEG信号中提取的特征或仅使用鼠标行为相比,通过将从EEG信号中提取的特征与表示鼠标单击行为的数据进行组合,可以大大提高预测学术情感的准确性。此外,还进行了一些实验,以评估系统在学习过程中各个提取特征的值明显偏离其均值的点的预测准确性。实验证实,预测性能会随着特征值的数量显着偏离平均值而增加。

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