Online Mixed Discrete and Continuous Optimization: Algorithms, Regret Analysis and Applications
Abstract
We study an online mixed discrete and continuous optimization problem where a decision maker interacts with an unknown environment for a number of rounds. At each round, the decision maker needs to first jointly choose a discrete and a continuous actions and then receives a reward associated with the chosen actions. The goal for the decision maker is to maximize the accumulative reward after rounds. We propose algorithms to solve the online mixed discrete and continuous optimization problem and prove that the algorithms yield sublinear regret in . We show that a wide range of applications in practice fit into the framework of the online mixed discrete and continuous optimization problem, and apply the proposed algorithms to solve these applications with regret guarantees. We validate our theoretical results with numerical experiments.
Cite
@article{arxiv.2309.07630,
title = {Online Mixed Discrete and Continuous Optimization: Algorithms, Regret Analysis and Applications},
author = {Lintao Ye and Ming Chi and Zhi-Wei Liu and Xiaoling Wang and Vijay Gupta},
journal= {arXiv preprint arXiv:2309.07630},
year = {2024}
}
Comments
18 pages, 2 figures