Thresholding Graph Bandits with GrAPL

22 May 2019Daniel LeJeuneGautam DasarathyRichard G. Baraniuk

In this paper, we introduce a new online decision making paradigm that we call Thresholding Graph Bandits. The main goal is to efficiently identify a subset of arms in a multi-armed bandit problem whose means are above a specified threshold... (read more)

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