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Let EEG Models Learn EEG

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abstract

High-fidelity EEG generation is critical for alleviating data scarcity and addressing privacy constraints in large-scale neural modeling. Despite recent progress, most existing approaches formulate EEG generation via discrete denoising objectives, which inadequately reflect the inherently continuous temporal dynamics and spectral structure of neural activity. As a result, these methods often struggle to preserve long-range temporal dependencies and exhibit mismatches in the spectral and temporal structure of the generated signals. In this work, we argue that effective EEG generation requires models that operate directly on the continuous evolution of neural signals. We introduce Just EEG Transformer (JET), a generative framework based on conditional flow matching that models EEG as raw sequences evolving along continuous trajectories. By learning a smooth vector field that transports noise to the EEG data distribution, JET captures temporal continuity and transient dynamics without relying on discretized denoising schemes or domain-specific representations. To ensure that the learned dynamics remain consistent with key properties of EEG signals, we introduce principled constraints that preserve spectral structure, temporal stationarity, and signal-level statistics. Across three large-scale benchmarks, JET consistently achieves state-of-the-art performance, reducing TS-FID by over 40% compared to strong baselines. Extensive analyses show that JET captures key structural properties of neural dynamics, providing a scalable and principled approach to EEG generation. Project page: https://y-research-sbu.github.io/JET/ .

fields

cs.LG 1

years

2026 1

verdicts

UNVERDICTED 1

representative citing papers

NeuroSonic: Conditional Flow Matching for EEG-to-Speech Reconstruction

cs.LG · 2026-06-23 · unverdicted · novelty 5.0

NeuroSonic introduces a conditional flow-matching framework that learns a deterministic transport from noise to speech conditioned on EEG, reporting up to 26.3% gains in perceptual quality over GAN, diffusion, and mean-flow baselines on cross-subject CineBrain and EAV evaluations.

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  • NeuroSonic: Conditional Flow Matching for EEG-to-Speech Reconstruction cs.LG · 2026-06-23 · unverdicted · none · ref 25 · internal anchor

    NeuroSonic introduces a conditional flow-matching framework that learns a deterministic transport from noise to speech conditioned on EEG, reporting up to 26.3% gains in perceptual quality over GAN, diffusion, and mean-flow baselines on cross-subject CineBrain and EAV evaluations.