Laya: A LeJEPA Approach to EEG via Latent Prediction over Reconstruction
arXiv cs.LG / 3/18/2026
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Key Points
- Laya is introduced as the first EEG foundation model based on LeJEPA, learning by predicting latent representations instead of reconstructing raw signals.
- The authors argue that reconstruction-based SSL biases representations toward high-variance artifacts rather than task-relevant neural structure, motivating latent prediction.
- Across EEG benchmarks, Laya shows improved performance under linear probing compared to reconstruction-based baselines, indicating better transferability of representations.
- The work highlights implications for EEG-based BCIs and neuroscience by offering a stable, principled training approach for high-level EEG representations.
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