Quantum Kernel Alignment with Stochastic Gradient Descent
Gian Gentinetta, David Sutter, et al.
QCE 2023
Fidelity quantum kernels provide a provable advantage on classification problems where a group structure in the data can be exploited. However, in practical applications, the group structure may be unknown or approximate, and scaling to the `utility' regime is affected by exponential concentration. We prove that an ideal behavior of fidelity kernels is always associated with a (possibly unknown) group structure in the feature map. We also propose a mitigation strategy for fidelity kernels, called Bit Flip Tolerance (BFT), to alleviate exponential concentration. Applied to real-world data with unknown structure, related to the charge schedule of electric vehicles, BFT proves useful on qubits, where mitigated accuracies reach , in line with classical, compared to without BFT. Through a synthetic dataset with qubits, we obtain an accuracy of , compared to of classical models, and of unmitigated quantum. This constitutes the largest experiment of quantum machine learning on IBM devices to date.
Gian Gentinetta, David Sutter, et al.
QCE 2023
Daniel Egger, Claudio Gambella, et al.
IEEE TQE
Iskandar Sitdikov, Jennifer Glick, et al.
APS March Meeting 2023
Ritajit Majumdar, Dhiraj Madan, et al.
VLSID 2024