利用卷积神经网络对脑电信号的记忆形成进行解码

Taeho Kang, Yiyu Chen, S. Fazli, C. Wallraven
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引用次数: 2

摘要

这项研究考察了是否有可能仅从大脑活动预测在语言学习环境中成功记忆以前学过的单词。参与者被要求记忆德语-韩语单词联想对,并在学习当天和学习后的第二天测试他们的记忆能力。为了研究通过多通道脑电图记录的大脑活动是否可以预测记忆形成,我们进行了统计分析,然后进行了单次分类:首先使用线性判别分析,然后使用卷积神经网络。我们的初步研究结果证实了之前的神经生理学发现,即在LDA和深度神经网络中,词汇记忆形成的概率预测都是可能的。
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Decoding of human memory formation with EEG signals using convolutional networks
This study examines whether it is possible to predict successful memorization of previously-learned words in a language learning context from brain activity alone. Participants are tasked with memorizing German-Korean word association pairs, and their retention performance is tested on the day of and the day after learning. To investigate whether brain activity recorded via multi-channel EEG is predictive of memory formation, we perform statistical analysis followed by single-trial classification: first by using linear discriminant analysis, and then with convolutional neural networks. Our preliminary results confirm previous neurophysiological findings, that above-chance prediction of vocabulary memory formation is possible in both LDA and deep neural networks.
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