动态时间扭曲:自定节奏学习任务的单干电极脑电图研究

T. Yamauchi, Kunchen Xiao, Casady Bowman, A. Mueen
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引用次数: 18

摘要

本研究探讨动态时间翘曲(DTW)作为一种可能的分析方法,用于基于脑电图的情感计算在个人间和个人内差异较大的自定进度学习任务中。在其中一项实验中,200名参与者进行了内隐类别学习任务,在整个实验过程中收集了他们的额叶脑电图信号。使用DTW,我们测量了参与者之间脑电图信号的不相似距离,并检验了k近邻算法可以从其他参与者的信号中预测参与者的自评感受的程度(参与者之间预测)。结果表明,DTW为异构环境下的EEG数据分析提供了潜在的有用特征。特别是,基于理论的时间序列数据分割对DTW分析特别有用,而平滑和标准化在应用于自定进度学习任务时是有害的。
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Dynamic time warping: A single dry electrode EEG study in a self-paced learning task
This study investigates dynamic time warping (DTW) as a possible analysis method for EEG-based affective computing in a self-paced learning task in which inter- and intra-personal differences are large. In one experiment, participants (N=200) carried out an implicit category learning task where their frontal EEG signals were collected throughout the experiment. Using DTW, we measured the dissimilarity distances of EEG signals between participants and examined the extent to which a k-Nearest Neighbors algorithm could predict self-rated feelings of a participant from signals taken from other participants (between-participants prediction). Results showed that DTW provides potentially useful characteristics for EEG data analysis in a heterogeneous setting. In particular, theory-based segmentation of time-series data were particularly useful for DTW analysis while smoothing and standardization were detrimental when applied in a self-paced learning task.
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