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Bibliographic Details
Main Authors: Hu, Junpeng, Li, Jinglai, Zhang, Lei, Jin, Shi
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2503.17780
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author Hu, Junpeng
Li, Jinglai
Zhang, Lei
Jin, Shi
author_facet Hu, Junpeng
Li, Jinglai
Zhang, Lei
Jin, Shi
contents Gaussian Process Regression (GPR) is a nonparametric supervised learning method, widely valued for its ability to quantify uncertainty. Despite its advantages and broad applications, classical GPR implementations face significant scalability challenges, as they involve matrix operations with a cubic complexity in relation to the dataset size. This computational challenge is further compounded by the demand of optimizing the Gaussian Process model over its hyperparameters, rendering the total computational cost prohibitive for data intensive problems. To address this issue, we propose a quantum gradient descent algorithm to optimize the Gaussian Process model. Taking advantage of recent advances in quantum algorithms for linear algebra, our algorithm achieves exponential speedup in computing the gradients of the log marginal likelihood. The entire gradient descent process is integrated into the quantum circuit. Through runtime analysis and error bounds, we demonstrate that our approach significantly improves the scalability of GPR model optimization, making it computationally feasible for large-scale applications.
format Preprint
id arxiv_https___arxiv_org_abs_2503_17780
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle A quantum gradient descent algorithm for optimizing Gaussian Process models
Hu, Junpeng
Li, Jinglai
Zhang, Lei
Jin, Shi
Quantum Physics
Gaussian Process Regression (GPR) is a nonparametric supervised learning method, widely valued for its ability to quantify uncertainty. Despite its advantages and broad applications, classical GPR implementations face significant scalability challenges, as they involve matrix operations with a cubic complexity in relation to the dataset size. This computational challenge is further compounded by the demand of optimizing the Gaussian Process model over its hyperparameters, rendering the total computational cost prohibitive for data intensive problems. To address this issue, we propose a quantum gradient descent algorithm to optimize the Gaussian Process model. Taking advantage of recent advances in quantum algorithms for linear algebra, our algorithm achieves exponential speedup in computing the gradients of the log marginal likelihood. The entire gradient descent process is integrated into the quantum circuit. Through runtime analysis and error bounds, we demonstrate that our approach significantly improves the scalability of GPR model optimization, making it computationally feasible for large-scale applications.
title A quantum gradient descent algorithm for optimizing Gaussian Process models
topic Quantum Physics
url https://arxiv.org/abs/2503.17780