English

Effective Policy Learning for Multi-Agent Online Coordination Beyond Submodular Objectives

Multiagent Systems 2025-09-29 v1 Machine Learning Optimization and Control

Abstract

In this paper, we present two effective policy learning algorithms for multi-agent online coordination(MA-OC) problem. The first one, \texttt{MA-SPL}, not only can achieve the optimal (1ce)(1-\frac{c}{e})-approximation guarantee for the MA-OC problem with submodular objectives but also can handle the unexplored α\alpha-weakly DR-submodular and (γ,β)(\gamma,\beta)-weakly submodular scenarios, where cc is the curvature of the investigated submodular functions, α\alpha denotes the diminishing-return(DR) ratio and the tuple (γ,β)(\gamma,\beta) represents the submodularity ratios. Subsequently, in order to reduce the reliance on the unknown parameters α,γ,β\alpha,\gamma,\beta inherent in the \texttt{MA-SPL} algorithm, we further introduce the second online algorithm named \texttt{MA-MPL}. This \texttt{MA-MPL} algorithm is entirely \emph{parameter-free} and simultaneously can maintain the same approximation ratio as the first \texttt{MA-SPL} algorithm. The core of our \texttt{MA-SPL} and \texttt{MA-MPL} algorithms is a novel continuous-relaxation technique termed as \emph{policy-based continuous extension}. Compared with the well-established \emph{multi-linear extension}, a notable advantage of this new \emph{policy-based continuous extension} is its ability to provide a lossless rounding scheme for any set function, thereby enabling us to tackle the challenging weakly submodular objectives. Finally, extensive simulations are conducted to validate the effectiveness of our proposed algorithms.

Keywords

Cite

@article{arxiv.2509.22596,
  title  = {Effective Policy Learning for Multi-Agent Online Coordination Beyond Submodular Objectives},
  author = {Qixin Zhang and Yan Sun and Can Jin and Xikun Zhang and Yao Shu and Puning Zhao and Li Shen and Dacheng Tao},
  journal= {arXiv preprint arXiv:2509.22596},
  year   = {2025}
}

Comments

Accepted to NeurIPS 2025

R2 v1 2026-07-01T05:59:15.576Z