Literature DB >> 28966996

Confused or not Confused?: Disentangling Brain Activity from EEG Data Using Bidirectional LSTM Recurrent Neural Networks.

Zhaoheng Ni1, Ahmet Cem Yuksel1, Xiuyan Ni1, Michael I Mandel2, Lei Xie3.   

Abstract

Brain fog, also known as confusion, is one of the main reasons for low performance in the learning process or any kind of daily task that involves and requires thinking. Detecting confusion in a human's mind in real time is a challenging and important task that can be applied to online education, driver fatigue detection and so on. In this paper, we apply Bidirectional LSTM Recurrent Neural Networks to classify students' confusion in watching online course videos from EEG data. The results show that Bidirectional LSTM model achieves the state-of-the-art performance compared with other machine learning approaches, and shows strong robustness as evaluated by cross-validation. We can predict whether or not a student is confused in the accuracy of 73.3%. Furthermore, we find the most important feature to detecting the brain confusion is the gamma 1 wave of EEG signal. Our results suggest that machine learning is a potentially powerful tool to model and understand brain activity.

Entities:  

Keywords:  Confusion Detection; EEG; LSTM; Machine Learning

Year:  2017        PMID: 28966996      PMCID: PMC5620019          DOI: 10.1145/3107411.3107513

Source DB:  PubMed          Journal:  ACM BCB


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