Set Selection under Explorable Stochastic Uncertainty via Covering Techniques

Nicole Megow, Jens Schloter
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Abstract

Given subsets of uncertain values, we study the problem of identifying the subset of minimum total value (sum of the uncertain values) by querying as few values as possible. This set selection problem falls into the field of explorable uncertainty and is of intrinsic importance therein as it implies strong adversarial lower bounds for a wide range of interesting combinatorial problems such as knapsack and matchings. We consider a stochastic problem variant and give algorithms that, in expectation, improve upon these adversarial lower bounds. The key to our results is to prove a strong structural connection to a seemingly unrelated covering problem with uncertainty in the constraints via a linear programming formulation. We exploit this connection to derive an algorithmic framework that can be used to solve both problems under uncertainty, obtaining nearly tight bounds on the competitive ratio. This is the first non-trivial stochastic result concerning the sum of unknown values without further structure known for the set. With our novel methods, we lay the foundations for solving more general problems in the area of explorable uncertainty.
基于覆盖技术的可探索随机不确定性下的集合选择
在给定不确定值子集的情况下,研究了通过查询尽可能少的值来识别最小总价值子集(不确定值的总和)的问题。这个集合选择问题属于可探索不确定性领域,并且在其中具有内在的重要性,因为它为许多有趣的组合问题(如背包和匹配)暗示了强大的对抗性下界。我们考虑一个随机问题变体,并给出算法,在期望中,改进这些对抗性下界。我们的结果的关键是通过线性规划公式证明了与约束中不确定性的看似无关的覆盖问题之间的强结构联系。我们利用这种联系推导出一种算法框架,该框架可用于在不确定情况下解决这两个问题,并获得竞争比的近紧界。这是关于未知值和的第一个非平凡随机结果,没有进一步的已知结构。通过我们的新方法,我们为解决可探索不确定性领域更普遍的问题奠定了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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