DECODE: Dual-Enhanced Conditioned Diffusion for EEG Forecasting
arXiv cs.LG / 3/19/2026
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Key Points
- DECODE introduces a dual-enhanced conditioned diffusion framework for EEG forecasting that merges semantic guidance from natural language with historical signal dynamics to predict event-specific neural activity.
- The method leverages pre-trained language models to condition the diffusion process on textual descriptions of cognitive events and uses history-based Langevin dynamics to maintain temporal coherence.
- On a real-world driving task dataset with five behaviors, DECODE achieves sub-microvolt prediction accuracy (MAE ≈ 0.626 microvolts) over 75 timesteps with well-calibrated uncertainty estimates.
- The approach enables zero-shot generalization to novel behaviors and generates physiologically plausible EEG trajectories conditioned on semantic descriptions, supporting more interpretable BCIs.
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