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Assessing Quantum Advantage for Gaussian Process Regression

Published: May 28, 2025 | arXiv ID: 2505.22502v2

By: Dominic Lowe, M. S. Kim, Roberto Bondesan

Potential Business Impact:

Quantum computers can't speed up this math trick.

Business Areas:
Quantum Computing Science and Engineering

Gaussian Process Regression is a well-known machine learning technique for which several quantum algorithms have been proposed. We show here that in a wide range of scenarios these algorithms show no exponential speedup. We achieve this by rigorously proving that the condition number of a kernel matrix scales at least linearly with the matrix size under general assumptions on the data and kernel. We additionally prove that the sparsity and Frobenius norm of a kernel matrix scale linearly under similar assumptions. The implications for the quantum algorithms runtime are independent of the complexity of loading classical data on a quantum computer and also apply to dequantised algorithms. We supplement our theoretical analysis with numerical verification for popular kernels in machine learning.

Page Count
26 pages

Category
Physics:
Quantum Physics