Memory-Constrained No-Regret Learning in Adversarial Bandits

26 Feb 2020Xiao XuQing Zhao

An adversarial bandit problem with memory constraints is studied where only the statistics of a subset of arms can be stored. A hierarchical learning policy that requires only a sublinear order of memory space in terms of the number of arms is developed... (read more)

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