Network improvement problems

S. O. Krumke, M. Marathe, H. Noltemeier, R. Ravi, S. Ravi
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引用次数: 5

Abstract

The authors study budget constrained optimal network improvement problems. Such problems aim at finding optimal strategies for improving a network under some cost measure subject to certain budget constraints. As an example, consider the following prototypical problem: Let G = (V, E) be an undirected graph with two cost values L(e) and C(e) associated with each edge e, where L(e) denotes the length of e and C(e) denotes the cost of reducing the length of e by a unit amount. A reduction strategy specifies for each edge e, the amount by which L(e) is to be reduced. For a given budget B, the goal is to find a reduction strategy such that the total cost of reduction is at most B and the minimum cost tree (with respect to some measure M) under the modified L costs is the best over all possible reduction strategies which obey the budget constraint. Typical measures M for a tree are the total weight and the diameter. They provide both hardness and approximation results for the two measures M mentioned above. For the problem of minimizing the total weight of a spacing tree, they provide an algorithm that, for any fixed {gamma},{var_epsilon} > 0, finds a solution whose weight is at most (1 + 1/{gamma}) times that of a minimum length spanning tree plus an additive constant of at most {var_epsilon} and the total cost of improvement is at most (1 + {gamma}) times the budget B. This result can be extended to obtain approximation algorithms for more general network design problems considered in [GW, GG+94].
网络改进问题
研究预算约束下的最优网络改进问题。这类问题的目的是在一定的预算约束下,在一定的成本措施下,寻找改进网络的最优策略。例如,考虑以下的原型问题:设G = (V, E)是一个无向图,每条边E都有两个代价值L(E)和C(E),其中L(E)表示E的长度,C(E)表示将E的长度减少一个单位的代价。缩减策略为每条边e指定L(e)要缩减的量。对于给定的预算B,目标是找到一种削减策略,使得削减的总成本最多为B,并且在修改后的L成本下的最小成本树(相对于某些措施M)是所有可能的削减策略中最优的。树的典型测量M是总重量和直径。它们提供了上述两种测量方法M的硬度和近似结果。总重量最小化问题的间距树,它们提供了一种算法,对于任何固定{伽马},{var_epsilon} > 0,找到一个解决方案的重量最多(1 + 1 /{伽马})的最小长度生成树加上一个最多{var_epsilon}加常数和总成本的改进是最多(1 +{伽马})乘以b .这个结果可以扩展到预算获得更普遍的网络设计问题的近似算法考虑[吉瓦,GG + 94]。
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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