Efficient Parameter Optimisation for Quantum Kernel Alignment: A Sub-sampling Approach in Variational Training
Abstract
Quantum machine learning with quantum kernels for classification problems is a growing area of research. Recently, quantum kernel alignment techniques that parameterise the kernel have been developed, allowing the kernel to be trained and therefore aligned with a specific dataset. While quantum kernel alignment is a promising technique, it has been hampered by considerable training costs because the full kernel matrix must be constructed at every training iteration. Addressing this challenge, we introduce a novel method that seeks to balance efficiency and performance. We present a sub-sampling training approach that uses a subset of the kernel matrix at each training step, thereby reducing the overall computational cost of the training. In this work, we apply the sub-sampling method to synthetic datasets and a real-world breast cancer dataset and demonstrate considerable reductions in the number of circuits required to train the quantum kernel while maintaining classification accuracy.
Cite
@article{arxiv.2401.02879,
title = {Efficient Parameter Optimisation for Quantum Kernel Alignment: A Sub-sampling Approach in Variational Training},
author = {M. Emre Sahin and Benjamin C. B. Symons and Pushpak Pati and Fayyaz Minhas and Declan Millar and Maria Gabrani and Stefano Mensa and Jan Lukas Robertus},
journal= {arXiv preprint arXiv:2401.02879},
year = {2024}
}
Comments
Paper as accepted on Quantum on 2024-09-18. The method showcased in this work is also available as a Jupyter notebook at https://github.com/qiskit-community/qiskit-machine-learning/tree/IEEE2024