TL;DR
This paper demonstrates that self-supervised learning can effectively extract meaningful features from EEG signals, outperforming supervised models in low-label scenarios and revealing underlying physiological structures.
Contribution
The study introduces self-supervised learning techniques for EEG analysis, showing improved performance and interpretability over traditional supervised methods.
Findings
SSL outperforms supervised models with limited labels
Learned embeddings reveal physiological and clinical structures
SSL approaches are promising for EEG deep learning applications
Abstract
Objective. Supervised learning paradigms are often limited by the amount of labeled data that is available. This phenomenon is particularly problematic in clinically-relevant data, such as electroencephalography (EEG), where labeling can be costly in terms of specialized expertise and human processing time. Consequently, deep learning architectures designed to learn on EEG data have yielded relatively shallow models and performances at best similar to those of traditional feature-based approaches. However, in most situations, unlabeled data is available in abundance. By extracting information from this unlabeled data, it might be possible to reach competitive performance with deep neural networks despite limited access to labels. Approach. We investigated self-supervised learning (SSL), a promising technique for discovering structure in unlabeled data, to learn representations of EEG…
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Taxonomy
MethodsInfoNCE · Contrastive Predictive Coding
