Towards Quantum Operator-Valued Kernels
By: Hachem Kadri , Joachim Tomasi , Yuka Hashimoto and more
Potential Business Impact:
Makes computers learn better with new quantum tricks.
Quantum kernels are reproducing kernel functions built using quantum-mechanical principles and are studied with the aim of outperforming their classical counterparts. The enthusiasm for quantum kernel machines has been tempered by recent studies that have suggested that quantum kernels could not offer speed-ups when learning on classical data. However, most of the research in this area has been devoted to scalar-valued kernels in standard classification or regression settings for which classical kernel methods are efficient and effective, leaving very little room for improvement with quantum kernels. This position paper argues that quantum kernel research should focus on more expressive kernel classes. We build upon recent advances in operator-valued kernels, and propose guidelines for investigating quantum kernels. This should help to design a new generation of quantum kernel machines and fully explore their potentials.
Similar Papers
Benign Overfitting with Quantum Kernels
Quantum Physics
Finds hidden patterns in data using quantum computers.
Learning functions, operators and dynamical systems with kernels
Machine Learning (CS)
Teaches computers to learn from data.
On the similarity of bandwidth-tuned quantum kernels and classical kernels
Quantum Physics
Quantum computers can't beat regular computers here.