QUACK: Quantum Aligned Centroid Kernel
Kilian Tscharke, Sebastian Issel, Pascal Debus

TL;DR
QUACK introduces a quantum kernel method with linear training complexity that performs comparably to classical methods, enabling scalable quantum machine learning on high-dimensional datasets like MNIST.
Contribution
It presents a novel quantum kernel algorithm with linear training complexity, addressing scalability issues of quantum kernel methods in machine learning.
Findings
Achieves similar performance to classical kernels with quadratic training complexity.
Handles high-dimensional datasets like MNIST without dimensionality reduction.
Operates efficiently within current quantum hardware limitations.
Abstract
Quantum computing (QC) seems to show potential for application in machine learning (ML). In particular quantum kernel methods (QKM) exhibit promising properties for use in supervised ML tasks. However, a major disadvantage of kernel methods is their unfavorable quadratic scaling with the number of training samples. Together with the limits imposed by currently available quantum hardware (NISQ devices) with their low qubit coherence times, small number of qubits, and high error rates, the use of QC in ML at an industrially relevant scale is currently impossible. As a small step in improving the potential applications of QKMs, we introduce QUACK, a quantum kernel algorithm whose time complexity scales linear with the number of samples during training, and independent of the number of training samples in the inference stage. In the training process, only the kernel entries for the samples…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Quantum Information and Cryptography · Quantum many-body systems
