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Submodular Bandit Problem Under Multiple Constraints

1 June 2020
S. Takemori
Masahiro Sato
Takashi Sonoda
Janmajay Singh
Tomoko Ohkuma
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Abstract

The linear submodular bandit problem was proposed to simultaneously address diversified retrieval and online learning in a recommender system. If there is no uncertainty, this problem is equivalent to a submodular maximization problem under a cardinality constraint. However, in some situations, recommendation lists should satisfy additional constraints such as budget constraints, other than a cardinality constraint. Thus, motivated by diversified retrieval considering budget constraints, we introduce a submodular bandit problem under the intersection of lll knapsacks and a kkk-system constraint. Here kkk-system constraints form a very general class of constraints including cardinality constraints and the intersection of kkk matroid constraints. To solve this problem, we propose a non-greedy algorithm that adaptively focuses on a standard or modified upper-confidence bound. We provide a high-probability upper bound of an approximation regret, where the approximation ratio matches that of a fast offline algorithm. Moreover, we perform experiments under various combinations of constraints using a synthetic and two real-world datasets and demonstrate that our proposed methods outperform the existing baselines.

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