Quantum Algorithm for Online Exp-concave Optimization
Quantum Physics
2024-10-28 v1
Abstract
We explore whether quantum advantages can be found for the zeroth-order feedback online exp-concave optimization problem, which is also known as bandit exp-concave optimization with multi-point feedback. We present quantum online quasi-Newton methods to tackle the problem and show that there exists quantum advantages for such problems. Our method approximates the Hessian by quantum estimated inexact gradient and can achieve regret with queries at each round, where is the dimension of the decision set and is the total decision rounds. Such regret improves the optimal classical algorithm by a factor of .
Cite
@article{arxiv.2410.19688,
title = {Quantum Algorithm for Online Exp-concave Optimization},
author = {Jianhao He and Chengchang Liu and Xutong Liu and Lvzhou Li and John C. S. Lui},
journal= {arXiv preprint arXiv:2410.19688},
year = {2024}
}
Comments
The 41st International Conference on Machine Learning