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Hardness of Online Sleeping Combinatorial Optimization Problems

机译:在线睡眠组合优化问题的硬度

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We show that several online combinatorial optimization problems that admit efficient no-regret algorithms become computationally hard in the sleeping setting where a subset of actions becomes unavailable in each round. Specifically, we show that the sleeping versions of these problems are at least as hard as PAC learning DNF expressions, a long standing open problem. We show hardness for the sleeping versions of Online Shortest Paths, Online Minimum Spanning Tree, Online k-Subsets, Online k-Truncated Permutations, Online Minimum Cut, and Online Bipartite Matching. The hardness result for the sleeping version of the Online Shortest Paths problem resolves an open problem presented at COLT 2015 [Koolen et al., 2015].
机译:我们表明,在睡眠环境中,允许高效的无遗憾算法的几种在线组合优化问题在睡眠设置中难以计算出来,其中每轮动作子集不可用。具体而言,我们表明这些问题的睡眠版本至少与PAC学习DNF表达一样难以努力,这是一个长期的公开问题。我们为在线最短路径的睡眠版本,在线最小生成树,在线k子集,在线k截断排列,在线最小剪切和在线双链匹配的睡眠版本。在线最短路径问题的睡眠版的硬度结果解决了Colt 2015 [Koolen等,2015]呈现出一个公开的问题。

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