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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.

Abstract

Forecasting Electroncephalography (EEG) signals during cognitive events remains a fundamental challenge in neuroscience and Brain-Computer Interfaces (BCIs), as existing methods struggle to capture both the stochastic nature of neural dynamics and the semantic context of behavioral tasks. We present the Dual-Enhanced COnditioned Diffusion (DECODE) for EEG, a novel framework that unifies semantic guidance from natural language descriptions with temporal dynamics from historical signals to generate event-specific neural responses. DECODE leverages pre-trained language models to condition the diffusion process on rich textual descriptions of cognitive events, while maintaining temporal coherence through history-based Langevin dynamics. Evaluated on a real-world driving task dataset with five distinct behaviors, DECODE achieves sub-microvolt prediction accuracy (MAE = 0.626 microvolt) over 75 timestep horizons while maintaining well-calibrated uncertainty estimates. Our framework demonstrates that natural language can effectively bridge high-level cognitive descriptions and low-level neural dynamics, opening new possibilities for zero-shot generalization to novel behaviors and interpretable BCIs. By generating physiologically plausible, event-specific EEG trajectories conditioned on semantic descriptions, DECODE establishes a new paradigm for understanding and predicting context-dependent neural activity.