Published June 9, 2025 | Version Published
Conference Paper Open

Learning-Augmented Decentralized Online Convex Optimization in Networks

  • 1. ROR icon University of California, Riverside
  • 2. ROR icon University of Houston
  • 3. ROR icon California Institute of Technology

Abstract

This paper studies learning-augmented decentralized online convex optimization in a networked multi-agent system, a challenging setting that has remained under-explored. We first consider a linear learning-augmented decentralized online algorithm (LADO-Lin) that combines a machine learning (ML) policy with a baseline expert policy in a linear manner. We show that, while LADO-Lin can exploit the potential of ML predictions to improve the average cost performance, it cannot have guaranteed worst-case performance. To address this limitation, we propose a novel online algorithm (LADO) that adaptively combines the ML policy and expert policy to safeguard the ML predictions to achieve strong competitiveness guarantees. 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. Finally, we run an experiment on decentralized battery management. Our results highlight the potential of ML augmentation to improve the average performance as well as the guaranteed worst-case performance of LADO.

Copyright and License

Funding

Pengfei Li, Jianyi Yang, and Shaolei Ren were supported in part by the NSF under grants CNS-2007115 and CCF-2324941. Adam Wierman was supported by NSF grants CCF2326609, CNS-2146814, CPS-2136197, CNS-2106403, and NGSDI-2105648 as well as funding from the Resnick Sustainability Institute

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Additional details

Funding

National Science Foundation
CNS-2007115
National Science Foundation
CCF-2324941
National Science Foundation
CCF2326609
National Science Foundation
Collaborative Research: CNS Core: Small: Optimizing Large-Scale Heterogeneous ML Platforms 2146814
National Science Foundation
Collaborative Research: CPS. Medium: Enabling DER Integration via Redesign of Information Flows 2136197
National Science Foundation
Collaborative Research: CNS Core: Medium: Dynamic Data-driven Systems - Theory and Applications 2106403
National Science Foundation
Collaborative Research: NGSDI: CarbonFirst: A Sustainable and Reliable Carbon-Centric Cloud-Edge Software Infrastructure 2105648
Resnick Sustainability Institute

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Caltech groups
Division of Engineering and Applied Science (EAS)
Publication Status
Published