QUANT-PHLGJul 4, 2025

A Resource Efficient Quantum Kernel

arXiv:2507.03689v31 citationsh-index: 20
Originality Incremental advance
AI Analysis

This addresses a critical bottleneck for practical quantum machine learning on noisy intermediate-scale quantum devices, though it appears incremental as an optimization of existing quantum kernel methods.

The paper tackles the impractical scaling of conventional quantum feature maps by introducing a resource-efficient quantum kernel that reduces qubit and entangling gate requirements while preserving data characteristics. Experiments on benchmark datasets show marked improvements in accuracy and resource utilization compared to state-of-the-art quantum feature maps, with noisy simulations demonstrating functionality on near-term quantum devices.

Quantum processors may enhance machine learning by mapping high-dimensional data onto quantum systems for processing. Conventional feature maps, for encoding data onto a quantum circuit are currently impractical, as the number of entangling gates scales quadratically with the dimension of the dataset and the number of qubits. In this work, we introduce a quantum feature map designed to handle high-dimensional data with a significantly reduced number of qubits and entangling operations. Our approach preserves essential data characteristics while promoting computational efficiency, as evidenced by extensive experiments on benchmark datasets that demonstrate a marked improvement in both accuracy and resource utilization when using our feature map as a kernel for characterization, as compared to state-of-the-art quantum feature maps. Our noisy simulation results, combined with lower resource requirements, highlight our map's ability to function within the constraints of noisy intermediate-scale quantum devices. Through numerical simulations and small-scale implementation on a superconducting circuit quantum computing platform, we demonstrate that our scheme performs on par or better than a set of classical algorithms for classification. While quantum kernels are typically stymied by exponential concentration, our approach is affected with a slower rate with respect to both the number of qubits and features, which allows practical applications to remain within reach. Our findings herald a promising avenue for the practical implementation of quantum machine learning algorithms on near future quantum computing platforms.

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