English

Improved Projection-free Online Continuous Submodular Maximization

Machine Learning 2023-05-31 v1 Optimization and Control

Abstract

We investigate the problem of online learning with monotone and continuous DR-submodular reward functions, which has received great attention recently. To efficiently handle this problem, especially in the case with complicated decision sets, previous studies have proposed an efficient projection-free algorithm called Mono-Frank-Wolfe (Mono-FW) using O(T)O(T) gradient evaluations and linear optimization steps in total. However, it only attains a (11/e)(1-1/e)-regret bound of O(T4/5)O(T^{4/5}). In this paper, we propose an improved projection-free algorithm, namely POBGA, which reduces the regret bound to O(T3/4)O(T^{3/4}) while keeping the same computational complexity as Mono-FW. Instead of modifying Mono-FW, our key idea is to make a novel combination of a projection-based algorithm called online boosting gradient ascent, an infeasible projection technique, and a blocking technique. Furthermore, we consider the decentralized setting and develop a variant of POBGA, which not only reduces the current best regret bound of efficient projection-free algorithms for this setting from O(T4/5)O(T^{4/5}) to O(T3/4)O(T^{3/4}), but also reduces the total communication complexity from O(T)O(T) to O(T)O(\sqrt{T}).

Keywords

Cite

@article{arxiv.2305.18442,
  title  = {Improved Projection-free Online Continuous Submodular Maximization},
  author = {Yucheng Liao and Yuanyu Wan and Chang Yao and Mingli Song},
  journal= {arXiv preprint arXiv:2305.18442},
  year   = {2023}
}
R2 v1 2026-06-28T10:49:44.871Z