Chi-Sheng Chen, Samuel Yen-Chi Chen, Aidan Hung-Wen Tsai, Chun-Shu Wei
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QEEGNet: Quantum Machine Learning for Enhanced Electroencephalography Encoding
Electroencephalography (EEG) is a critical tool in neuroscience and clinical
practice for monitoring and analyzing brain activity. Traditional neural
network models, such as EEGNet, have achieved considerable success in decoding
EEG signals but often struggle with the complexity and high dimensionality of
the data. Recent advances in quantum computing present new opportunities to
enhance machine learning models through quantum machine learning (QML)
techniques. In this paper, we introduce Quantum-EEGNet (QEEGNet), a novel
hybrid neural network that integrates quantum computing with the classical
EEGNet architecture to improve EEG encoding and analysis, as a forward-looking
approach, acknowledging that the results might not always surpass traditional
methods but it shows its potential. QEEGNet incorporates quantum layers within
the neural network, allowing it to capture more intricate patterns in EEG data
and potentially offering computational advantages. We evaluate QEEGNet on a
benchmark EEG dataset, BCI Competition IV 2a, demonstrating that it
consistently outperforms traditional EEGNet on most of the subjects and other
robustness to noise. Our results highlight the significant potential of
quantum-enhanced neural networks in EEG analysis, suggesting new directions for
both research and practical applications in the field.