Assessing Quantum Advantage for Gaussian Process Regression
Assessing Quantum Advantage for Gaussian Process Regression
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.
Dominic Lowe、M. S. Kim、Roberto Bondesan
计算技术、计算机技术
Dominic Lowe,M. S. Kim,Roberto Bondesan.Assessing Quantum Advantage for Gaussian Process Regression[EB/OL].(2025-05-28)[2025-06-17].https://arxiv.org/abs/2505.22502.点此复制
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