Paper
Self-Supervised Representation Learning from Electroencephalography Signals
Published Oct 1, 2019 · Hubert J. Banville, Isabela Albuquerque, Aapo Hyvärinen
2019 IEEE 29th International Workshop on Machine Learning for Signal Processing (MLSP)
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Abstract
The supervised learning paradigm is limited by the cost - and sometimes the impracticality - of data collection and labeling in multiple domains. Self-supervised learning, a paradigm which exploits the structure of unlabeled data to create learning problems that can be solved with standard supervised approaches, has shown great promise as a pretraining or feature learning approach in fields like computer vision and time series processing. In this work, we present self-supervision strategies that can be used to learn informative representations from multivariate time series. One successful approach relies on predicting whether time windows are sampled from the same temporal context or not. As demonstrated on a clinically relevant task (sleep scoring) and with two electroencephalography datasets, our approach outperforms a purely supervised approach in low data regimes, while capturing important physiological information without any access to labels.
Self-supervised learning strategies can effectively learn informative representations from multivariate time series, outperforming purely supervised approaches in low data regimes and capturing important physiological information.
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