Abstract
The study introduces a hybrid computational framework that combines neuro-inspired information processing using spiking neural networks (SNNs) and quantum information processing using quantum kernels to develop quantum-enhanced machine learning models for spatio-temporal data, demonstrated through the classification of EEG data as a case study. In the proposed SNN-quantum computation (SNN-QC) framework, SNN with spike time information representation is employed to learn spatio-temporal interactions (EEG recorded from multiple channels over time). Frequency-based (rate-based) information as spike frequency state vectors are extracted from the SNN and classified using a quantum classifier. In the latter part, we use the quantum kernel approach utilising feature maps for classification tasks. The proposed SNN-QC is demonstrated on a benchmark EEG dataset to classify three distinct wrist movement tasks in six binary classification setups as a proof of concept. We introduce a novel high-order nonlinear feature map that demonstrates improved performance over state-of-the-art feature maps and several machine learning methods across most of the tasks studied. Furthermore, the role of hyperparameters for enhanced feature maps is also highlighted. The performance of SNN-QC is evaluated using statistical metrics and cross-validation techniques, demonstrating its efficacy across multiple binary classifiers. Quantum hardware validation is conducted using both a superconducting IBM-QPU and a high-fidelity noisy simulation that replicates a real QPU. Furthermore, the results demonstrate that the SNN-QC outperforms models that use statistical features rather than features extracted from the SNN, as the SNN accounts for the temporal interaction between the spatio-temporal input variables. Finally, we conclude that the SNN-QC offers a potential pathway for developing more accurate neuromorphic-quantum enhanced systems that are both energy-efficient and biologically-inspired, well-suited for dealing with spatio-temporal data.
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Details
1 Ulster University, Intelligent Systems Research Centre, Londonderry, UK (GRID:grid.12641.30) (ISNI:0000 0001 0551 9715)
2 Ulster University, Intelligent Systems Research Centre, Londonderry, UK (GRID:grid.12641.30) (ISNI:0000 0001 0551 9715); Auckland University of Technology, Knowledge Engineering and Discovery Research Institute, Auckland, New Zealand (GRID:grid.252547.3) (ISNI:0000 0001 0705 7067); Bulgarian Academy of Sciences, Institute for Information and Communication Technologies, Sofia, Bulgaria (GRID:grid.410344.6) (ISNI:0000 0001 2097 3094)
3 Ulster University, Intelligent Systems Research Centre, Londonderry, UK (GRID:grid.12641.30) (ISNI:0000 0001 0551 9715); University of Bath, Institute for the Augmented Human, Bath, UK (GRID:grid.7340.0) (ISNI:0000 0001 2162 1699)




