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arxiv: 1510.02041 · v3 · pith:7XPD47WUnew · submitted 2015-10-07 · 📊 stat.ML

Asymptotically Optimal Sequential Experimentation Under Generalized Ranking

classification 📊 stat.ML
keywords distributionsnumberpopulationsamplingunderasymptoticallyboundconditions
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We consider the \mnk{classical} problem of a controller activating (or sampling) sequentially from a finite number of $N \geq 2$ populations, specified by unknown distributions. Over some time horizon, at each time $n = 1, 2, \ldots$, the controller wishes to select a population to sample, with the goal of sampling from a population that optimizes some "score" function of its distribution, e.g., maximizing the expected sum of outcomes or minimizing variability. We define a class of \textit{Uniformly Fast (UF)} sampling policies and show, under mild regularity conditions, that there is an asymptotic lower bound for the expected total number of sub-optimal population activations. Then, we provide sufficient conditions under which a UCB policy is UF and asymptotically optimal, since it attains this lower bound. Explicit solutions are provided for a number of examples of interest, including general score functionals on unconstrained Pareto distributions (of potentially infinite mean), and uniform distributions of unknown support. Additional results on bandits of Normal distributions are also provided.

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