Action Centered Contextual Bandits

NeurIPS 2017 Kristjan GreenewaldAmbuj TewariSusan MurphyPredag Klasnja

Contextual bandits have become popular as they offer a middle ground between very simple approaches based on multi-armed bandits and very complex approaches using the full power of reinforcement learning. They have demonstrated success in web applications and have a rich body of associated theoretical guarantees... (read more)

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