Learning-Augmented Decentralized Online Convex Optimization in Networks
Abstract
This paper studies decentralized online convex optimization in a networked multi-agent system and proposes a novel algorithm, Learning-Augmented Decentralized Online optimization (LADO), for individual agents to select actions only based on local online information. LADO leverages a baseline policy to safeguard online actions for worst-case robustness guarantees, while staying close to the machine learning (ML) policy for average performance improvement. In stark contrast with the existing learning-augmented online algorithms that focus on centralized settings, LADO achieves strong robustness guarantees in a decentralized setting. We also prove the average cost bound for LADO, revealing the tradeoff between average performance and worst-case robustness and demonstrating the advantage of training the ML policy by explicitly considering the robustness requirement.
Cite
@article{arxiv.2306.10158,
title = {Learning-Augmented Decentralized Online Convex Optimization in Networks},
author = {Pengfei Li and Jianyi Yang and Adam Wierman and Shaolei Ren},
journal= {arXiv preprint arXiv:2306.10158},
year = {2024}
}
Comments
Accepted by SIGMETRICS 2025