JOURNAL ARTICLE

Quantum Gaussian process regression for Bayesian optimization

Frederic RappMarco Roth

Year: 2024 Journal:   Quantum Machine Intelligence Vol: 6 (1)   Publisher: Springer Science+Business Media

Abstract

Abstract Gaussian process regression is a well-established Bayesian machine learning method. We propose a new approach to Gaussian process regression using quantum kernels based on parameterized quantum circuits. By employing a hardware-efficient feature map and careful regularization of the Gram matrix, we demonstrate that the variance information of the resulting quantum Gaussian process can be preserved. We also show that quantum Gaussian processes can be used as a surrogate model for Bayesian optimization, a task that critically relies on the variance of the surrogate model. To demonstrate the performance of this quantum Bayesian optimization algorithm, we apply it to the hyperparameter optimization of a machine learning model which performs regression on a real-world dataset. We benchmark the quantum Bayesian optimization against its classical counterpart and show that quantum version can match its performance.

Keywords:
Bayesian optimization Gaussian process Kriging Bayesian probability Regression Computer science Bayesian linear regression Econometrics Gaussian Mathematics Statistics Artificial intelligence Machine learning Bayesian inference Physics

Metrics

23
Cited By
14.05
FWCI (Field Weighted Citation Impact)
53
Refs
0.98
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

Quantum Computing Algorithms and Architecture
Physical Sciences →  Computer Science →  Artificial Intelligence
Machine Learning in Materials Science
Physical Sciences →  Materials Science →  Materials Chemistry
Quantum Information and Cryptography
Physical Sciences →  Computer Science →  Artificial Intelligence
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