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On the Adaptivity Gap of Stochastic Orienteering

机译:论随机定向越野的适应性差距

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The input to the stochastic orienteering problem consists of a budget B and metric (V, d) where each vertex v ∈ V has a job with a deterministic reward and a random processing time (drawn from a known distribution). The processing times are independent across vertices. The goal is to obtain a non-anticipatory policy (originating from a given root vertex) to run jobs at different vertices, that maximizes expected reward, subject to the total distance traveled plus processing times being at most B. An adaptive policy is one that can choose the next vertex to visit based on observed random instantiations. Whereas, a non-adaptive policy is just given by a fixed ordering of vertices. The adaptivity gap is the worst-case ratio of the expected rewards of the optimal adaptive and non-adaptive policies. We prove an Ω ((log log B)~(1/2)) lower bound on the adaptivity gap of stochastic orienteering. This provides a negative answer to the O(1)-adaptivity gap conjectured in, and comes close to the O(log log B) upper bound proved there. This result holds even on a line metric. We also show an O(log log B) upper bound on the adaptivity gap for the correlated stochastic orienteering problem, where the reward of each job is random and possibly correlated to its processing time. Using this, we obtain an improved quasi-polynomial time min{log n, log B}·O(log~2 log B)-approximation algorithm for correlated stochastic orienteering.
机译:随机定向运动问题的输入由预算B和度量(V,d)组成,其中每个顶点v∈V都有一份确定性报酬和随机处理时间的工作(从已知分布中得出)。各个顶点的处理时间是独立的。目标是获得一个非预期的策略(从给定的根顶点开始),以在不同的顶点上运行作业,从而使预期的报酬最大化,但要取决于行进的总距离加上处理时间最多为B。可以根据观察到的随机实例选择下一个要访问的顶点。而非自适应策略仅由固定的顶点顺序给出。适应性差距是最优适应性和非适应性策略的预期收益的最坏情况比率。我们证明了随机定向越野的适应性差距为Ω((log log B)〜(1/2))下界。这为推测的O(1)-适应性缺口提供了否定答案,并且接近此处证明的O(log log B)上限。该结果甚至适用于线路指标。我们还显示了相关随机定向越野问题在适应性差距上的O(log log B)上限,其中每个作业的报酬是随机的,并且可能与其处理时间相关。利用此方法,我们获得了一种改进的准多项式时间min {log n,log B}·O(log〜2 log B)近似算法,用于相关的定向越野运动。

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