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Improved Approximate Regret for Decentralized Online Continuous Submodular Maximization via Reductions

Machine Learning 2026-02-11 v1

Abstract

To expand the applicability of decentralized online learning, previous studies have proposed several algorithms for decentralized online continuous submodular maximization (D-OCSM) -- a non-convex/non-concave setting with continuous DR-submodular reward functions. However, there exist large gaps between their approximate regret bounds and the regret bounds achieved in the convex setting. Moreover, if focusing on projection-free algorithms, which can efficiently handle complex decision sets, they cannot even recover the approximate regret bounds achieved in the centralized setting. In this paper, we first demonstrate that for D-OCSM over general convex decision sets, these two issues can be addressed simultaneously. Furthermore, for D-OCSM over downward-closed decision sets, we show that the second issue can be addressed while significantly alleviating the first issue. Our key techniques are two reductions from D-OCSM to decentralized online convex optimization (D-OCO), which can exploit D-OCO algorithms to improve the approximate regret of D-OCSM in these two cases, respectively.

Keywords

Cite

@article{arxiv.2602.09502,
  title  = {Improved Approximate Regret for Decentralized Online Continuous Submodular Maximization via Reductions},
  author = {Yuanyu Wan and Yu Shen and Dingzhi Yu and Bo Xue and Mingli Song},
  journal= {arXiv preprint arXiv:2602.09502},
  year   = {2026}
}
R2 v1 2026-07-01T10:29:18.065Z