An Asymptotically Optimal Policy for Uniform Bandits of Unknown Support

Consider the problem of a controller sampling sequentially from a finite number of populations, specified by random variables , and ; where denotes the outcome from population the time it is sampled. It is assumed that for each fixed , is a sequence of i.i.d. uniform random variables over some interval , with the support (i.e., ) unknown to the controller. The objective is to have a policy for deciding, based on available data, from which of the populations to sample from at any time so as to maximize the expected sum of outcomes of samples or equivalently to minimize the regret due to lack on information of the parameters and . In this paper, we present a simple inflated sample mean (ISM) type policy that is asymptotically optimal in the sense of its regret achieving the asymptotic lower bound of Burnetas and Katehakis (1996). Additionally, finite horizon regret bounds are given.
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