Stochastic Minimum Spanning Trees and Related Problems

Pegah Kamousi, S. Suri
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引用次数: 4

Abstract

We investigate the computational complexity of minimum spanning trees and maximum flows in a simple model of stochastic networks, where each node or edge of an undirected master graph can fail with an independent and arbitrary probability. We show that computing the expected length of the MST or the value of the max-flow is #P-Hard, but that for the MST it can be approximated within O(log n) factor for metric graphs. The hardness proof for the MST applies even to Euclidean graphs in 3 dimensions. We also show that the tail bounds for the MST cannot be approximated in general to any multiplicative factor unless P = NP. This stochastic MST problem was mentioned but left unanswered by Bertsimas, Jaillet and Odoni [Operations Research, 1990] in their work on a priori optimization. More generally, we also consider the complexity of linear programming under probabilistic constraints, and show it to be #P-Hard. If the linear program has a constant number of variables, then it can be solved exactly in polynomial time. For general dimensions, we give a randomized algorithm for approximating the probability of LP feasibility.
随机最小生成树及其相关问题
我们研究了一个简单的随机网络模型中最小生成树和最大流的计算复杂度,其中无向主图的每个节点或边都可能以独立的任意概率失效。我们表明,计算MST的期望长度或最大流量的值是#P-Hard,但对于MST,它可以在度量图的O(log n)因子内近似。MST的硬度证明甚至适用于三维欧几里得图。我们还表明,除非P = NP,否则MST的尾界一般不能近似于任何乘法因子。Bertsimas, Jaillet和Odoni[运筹学,1990]在他们关于先验优化的工作中提到了这个随机MST问题,但没有回答。更一般地说,我们还考虑了概率约束下线性规划的复杂性,并表明它是#P-Hard。如果线性程序具有常数变量,那么它可以在多项式时间内精确地求解。对于一般维数,我们给出了一种近似LP可行性概率的随机算法。
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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