QUANT-PHLGMLNov 22, 2023

A Unified Framework for Trace-induced Quantum Kernels

arXiv:2311.13552v117 citationsh-index: 13
Originality Incremental advance
AI Analysis

This work provides a systematic framework for comparing quantum kernels, which is incremental for researchers in quantum machine learning.

The authors tackled the problem of improving quantum kernel methods by unifying all trace-induced quantum kernels into a common framework, showing that models based on local projected kernels can achieve comparable performance to global fidelity kernels while requiring fewer quantum resources.

Quantum kernel methods are promising candidates for achieving a practical quantum advantage for certain machine learning tasks. Similar to classical machine learning, an exact form of a quantum kernel is expected to have a great impact on the model performance. In this work we combine all trace-induced quantum kernels, including the commonly-used global fidelity and local projected quantum kernels, into a common framework. We show how generalized trace-induced quantum kernels can be constructed as combinations of the fundamental building blocks we coin "Lego" kernels, which impose an inductive bias on the resulting quantum models. We relate the expressive power and generalization ability to the number of non-zero weight Lego kernels and propose a systematic approach to increase the complexity of a quantum kernel model, leading to a new form of the local projected kernels that require fewer quantum resources in terms of the number of quantum gates and measurement shots. We show numerically that models based on local projected kernels can achieve comparable performance to the global fidelity quantum kernel. Our work unifies existing quantum kernels and provides a systematic framework to compare their properties.

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