A Spiking Neural Network-Quantum Model for Spatiotemporal Data Analysis
Abstract: The study introduces a novel computational framework combining neuro-inspired information through spiking neural networks (SNNs) and quantum information using quantum kernels to develop quantum machine learning models. The framework uses a 3D brain-inspired SNN model to learn spatiotemporal EEG signals through their dynamic interaction. Spike frequency state vectors are extracted from a 3D SNN and a quantum kernel classifier is used to classify them into predefined classes. The study also proposes a new embedding function to enhance the performance of the quantum kernel classifier. The performance of the model is evaluated using statistical metrics and cross-validation techniques, demonstrating its superior efficacy on multiple state-of-the-art embedding functions and classical baseline classifiers. The results indicate a clear advantage of having an integrated framework of an SNN and a quantum kernel, which overcomes the limitations of existing classifiers in dealing with spatiotemporal data and enhances the performance of existing SNNs by improving the classification of their complex internal states.
External IDs:doi:10.1109/qai63978.2025.00071
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