Contextual multi-armed bandit (MAB) algorithms have been shown promising for maximizing cumulative rewards in sequential decision tasks such as news article recommendation systems, web page ad placement algorithms, and mobile health. However, most of the proposed contextual MAB algorithms assume linear relationships between the reward and the context of the action. This paper proposes a new contextual MAB algorithm for a relaxed, semiparametric reward model that supports nonstationarity. The proposed method is less restrictive, easier to implement and faster than two alternative algorithms that consider the same model, while achieving a tight regret upper bound. We prove that the high-probability upper bound of the regret incurred by the proposed algorithm has the same order as the Thompson sampling algorithm for linear reward models. The proposed and existing algorithms are evaluated via simulation and also applied to Yahoo! news article recommendation log data.
Gi-Soo Kim (Seoul National University)
Myunghee Cho Paik (Seoul National University)
Related Events (a corresponding poster, oral, or spotlight)
2019 Oral: Contextual Multi-armed Bandit Algorithm for Semiparametric Reward Model »
Thu Jun 13th 04:35 -- 04:40 PM Room Hall B