Bandit Multi-linear DR-Submodular Maximization and Its Applications on Adversarial Submodular Bandits (2305.12402v1)
Abstract: We investigate the online bandit learning of the monotone multi-linear DR-submodular functions, designing the algorithm $\mathtt{BanditMLSM}$ that attains $O(T{2/3}\log T)$ of $(1-1/e)$-regret. Then we reduce submodular bandit with partition matroid constraint and bandit sequential monotone maximization to the online bandit learning of the monotone multi-linear DR-submodular functions, attaining $O(T{2/3}\log T)$ of $(1-1/e)$-regret in both problems, which improve the existing results. To the best of our knowledge, we are the first to give a sublinear regret algorithm for the submodular bandit with partition matroid constraint. A special case of this problem is studied by Streeter et al.(2009). They prove a $O(T{4/5})$ $(1-1/e)$-regret upper bound. For the bandit sequential submodular maximization, the existing work proves an $O(T{2/3})$ regret with a suboptimal $1/2$ approximation ratio (Niazadeh et al. 2021).
- Zongqi Wan (7 papers)
- Jialin Zhang (87 papers)
- Wei Chen (1290 papers)
- Xiaoming Sun (93 papers)
- Zhijie Zhang (25 papers)