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On Identifying Good Options under Combinatorially Structured Feedback in Finite Noisy Environments

机译:在有限噪声环境中识别组合结构反馈下的好选项

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We consider the problem of identifying a good option out of finite set of options under combinatorially structured, noisy feedback about the quality of the options in a sequential process: In each round, a subset of the options, from an available set of subsets, can be selected to receive noisy information about the quality of the options in the chosen subset. The goal is to identify the highest quality option, or a group of options of the highest quality, with a small error probability, while using the smallest number of measurements. The problem generalizes best-arm identification problems. By extending previous work, we design new algorithms that are shown to be able to exploit the combinatorial structure of the problem in a nontrivial fashion, while being unimprovable in special cases. The algorithms call a set multi-covering oracle, hence their performance and efficiency is strongly tied to whether the associated set multicovering problem can be efficiently solved.
机译:我们考虑在组合结构化的有限情况下识别有限组合选项的良好选择的问题关于顺序过程中的选项质量的有限选项:在每轮中,选项的子集,从可用的子集中,可以被选中以接收有关所选子集中选项质量的噪声信息。目标是识别最高质量的选项,或一组最高质量的选项,误差概率小,同时使用最小的测量值。问题概括了最佳武器的识别问题。通过延长以前的工作,我们设计了新的算法,该算法能够以非动力方式利用问题的组合结构,同时在特殊情况下无法实现。该算法呼叫集合多覆盖Oracle,因此它们的性能和效率强烈地绑定到是否可以有效解决相关的集多套接问题。

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