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Minmax Regret k-Sink Location on a Dynamic Path Network with Uniform Capacities

机译:Minmax在动态路径网络上致抱K-supl位置,具有均匀容量

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摘要

In Dynamic flow networks an edge's capacity is the amount of flow (items) that can enter it in unit time. All flow must be moved to sinks and congestion occurs if flow has to wait at a vertex for other flow to leave. In the uniform capacity variant all edges have the same capacity. The minmax k-sink location problem is to place k sinks minimizing the maximum time before all items initially on vertices can be evacuated to a sink. The minmax regret version introduces uncertainty into the input; the amount at each source is now only specified to within a range. The problem is to find a universal solution (placement of k sinks) whose regret (difference from optimal for a given input) is minimized over all inputs consistent with the given range restrictions. The previous best algorithms for the minmax regret version of the k-sink location problem on a path with uniform capacities ran in O(n) time for k = 2 and O(nk+ 1) for k 2. A major bottleneck to improving those solutions was that minmax regret seemed an inherently global property. This paper derives new combinatorial insights that allow decomposition into local problems. This permits designing two new algorithms. The first runs in O(n3 log n) time independent of k and the second in O(nk2 logk+ 1 n) time. These improve all previous algorithms for k 1 and, for k 2, are the first polynomial time algorithms known.
机译:在动态流量网络中,边缘的容量是可以在单位时间输入它的流量(项目)。如果流在顶点以其他流动留在顶点上,必须将所有流移动到沉没,并且发生拥塞。在均匀的容量变体中,所有边缘的容量都具有相同的容量。 Minmax K-Supm位置问题是将K水槽放置最小化最大限度的最大时间,然后在最初的顶点上的所有物品上都可以被抽空到水槽。 MinMax后悔版本将不确定性引入输入;每个源处的金额现在仅在范围内指定。问题是找到一个通用解决方案(k下沉的位置),其后悔(从给定输入的最佳差异)最小化与给定范围限制一致的所有输入。先前的最佳算法对于具有均匀容量的路径上的K-ins位置问题的MinMax后悔版本在k = 2和O(nk + 1)的k> 2中运行的k> 2。为改善那些的主要瓶颈解决方案是Minmax遗憾地似乎是一个本质上的全球性财产。本文源于新的组合见解,使分解为局部问题。这允许设计两个新算法。第一个在O(n3 log n)时间内运行,与k和o(nk2 logk + 1 n)的k和第二个相同。这些改善了以前的K> 1的所有算法,并且对于K> 2是已知的第一多项式时间算法。

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