Skip to yearly menu bar Skip to main content


Best Arm Identification in Graphical Bilinear Bandits

Geovani Rizk · Albert Thomas · Igor Colin · Rida Laraki · Yann Chevaleyre

Keywords: [ Bandits ] [ Reinforcement Learning and Planning ]


We introduce a new graphical bilinear bandit problem where a learner (or a \emph{central entity}) allocates arms to the nodes of a graph and observes for each edge a noisy bilinear reward representing the interaction between the two end nodes. We study the best arm identification problem in which the learner wants to find the graph allocation maximizing the sum of the bilinear rewards. By efficiently exploiting the geometry of this bandit problem, we propose a \emph{decentralized} allocation strategy based on random sampling with theoretical guarantees. In particular, we characterize the influence of the graph structure (e.g. star, complete or circle) on the convergence rate and propose empirical experiments that confirm this dependency.

Chat is not available.