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CKD: Contrastive Knowledge Distillation for Cross-Dataset EEG Classification.

Ziwei Wang, Xingyi He, Hongbin Wang

    IEEE Transactions on Bio-Medical Engineering
    |June 8, 2026
    PubMed
    Summary
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    This study introduces a contrastive knowledge distillation (CKD) framework to enhance cross-dataset electroencephalography (EEG) decoding. CKD improves brain-computer interface (BCI) model generalizability by aligning feature representations across diverse EEG datasets.

    Area of Science:

    • Neuroscience
    • Machine Learning
    • Biomedical Engineering

    Background:

    • Cross-dataset transfer in electroencephalography (EEG) brain-computer interfaces (BCIs) is hindered by significant data distribution shifts.
    • Variations in subjects, devices, and protocols create challenges for reliable EEG decoding across different datasets.

    Purpose of the Study:

    • To develop an advanced framework for improving cross-dataset EEG decoding by enhancing knowledge transfer.
    • To address the limitations of conventional output-level distillation in handling distribution shifts.

    Main Methods:

    • A two-stage contrastive knowledge distillation (CKD) framework was proposed, involving teacher pretraining and online adaptation.
    • CKD integrates logit-level distillation with feature-level contrastive alignment to transfer both predictive behavior and representation structure.

    Related Experiment Videos

  • The framework aims to improve knowledge transfer beyond traditional methods.
  • Main Results:

    • CKD significantly outperformed twelve baseline methods across five motor imagery EEG datasets in both single-source and multi-source transfer scenarios.
    • The framework demonstrated superior teacher-student alignment in feature geometry and distribution consistency.
    • Explicit domain adaptation further enhanced CKD's performance.

    Conclusions:

    • The proposed CKD framework offers an effective solution for robust cross-dataset EEG decoding.
    • CKD enhances predictive knowledge transfer and latent feature alignment, crucial for overcoming severe dataset shifts.
    • This work advances the robustness and generalizability of EEG decoding for practical BCI applications in real-world conditions.