MAEEG: Masked Auto-encoder for EEG Representation Learning
Chien, Hsiang-Yun Sherry, Goh, Hanlin, Sandino, Christopher M., Cheng, Joseph Y.
–arXiv.org Artificial Intelligence
Decoding information from bio-signals such as EEG, using machine learning has been a challenge due to the small data-sets and difficulty to obtain labels. We propose a reconstruction-based self-supervised learning model, the masked auto-encoder for EEG (MAEEG), for learning EEG representations by learning to reconstruct the masked EEG features using a transformer architecture. We found that MAEEG can learn representations that significantly improve sleep stage classification ( 5% accuracy increase) when only a small number of labels are given. We also found that input sample lengths and different ways of masking during reconstruction-based SSL pretraining have a huge effect on downstream model performance. Specifically, learning to reconstruct a larger proportion and more concentrated masked signal results in better performance on sleep classification. Our findings provide insight into how reconstruction-based SSL could help representation learning for EEG.
arXiv.org Artificial Intelligence
Oct-27-2022
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