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arxiv: 2305.07603 · v1 · pith:MM6DGR7R · submitted 2023-05-12 · math.OC · math.ST· stat.TH

Efficient Dynamic Allocation Policy for Robust Ranking and Selection under Stochastic Control Framework

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classification math.OC math.STstat.TH
keywords dynamicallocationbudgetpolicyunderalternativecontrolframework
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This research considers the ranking and selection with input uncertainty. The objective is to maximize the posterior probability of correctly selecting the best alternative under a fixed simulation budget, where each alternative is measured by its worst-case performance. We formulate the dynamic simulation budget allocation decision problem as a stochastic control problem under a Bayesian framework. Following the approximate dynamic programming theory, we derive a one-step-ahead dynamic optimal budget allocation policy and prove that this policy achieves consistency and asymptotic optimality. Numerical experiments demonstrate that the proposed procedure can significantly improve performance.

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