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Two-stage Robust Network Design with Exponential Scenarios

机译:具有指数场景的两阶段鲁棒网络设计

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摘要

We study two-stage robust variants of combinatorial optimization problems on undirected graphs, like Steiner tree, Steiner forest, and uncapacitated facility location. Robust optimization problems, previously studied by Dhamdhere et al. (Proc. of 46th Annual IEEE Symposium on Foundations of Computer Science (FOCS'05), pp. 367-378, 2005), Golovin et al. (Proc. of the 23rd Annual Symposium on Theoretical Aspects of Computer Science (STACS), 2006), and Feige et al. (Proc. of the 12th International Integer Programming and Combinatorial Optimization Conference, pp. 439-453, 2007), are two-stage planning problems in which the requirements are revealed after some decisions are taken in Stage 1. One has to then complete the solution, at a higher cost, to meet the given requirements. In the robust &-Steiner tree problem, for example, one buys some edges in Stage 1. Then k terminals are revealed in Stage 2 and one has to buy more edges, at a higher cost, to complete the Stage 1 solution to build a Steiner tree on these terminals. The objective is to minimize the total cost under the worst-case scenario. In this paper, we focus on the case of exponentially many scenarios given implicitly. A scenario consists of any subset of k terminals (for k-Steiner tree), or any subset of k terminal-pairs (for k-Steiner forest), or any subset of k clients (for facility location). Feige et al. (Proc. of the 12th International Integer Programming and Combinatorial Optimization Conference, pp. 439-453, 2007) give an LP-based general framework for approximation algorithms for a class of two stage robust problems. Their framework cannot be used for network design problems like k-Steiner tree (see later elaboration). Their framework can be used for the robust facility location problem, but gives only a logarithmic approximation. We present the first constant-factor approximation algorithms for the robust k-Steiner tree (with exponential number of scenarios) and robust uncapacitated facility location problems. Our algorithms are combinatorial and are based on guessing the optimum cost and clustering to aggregate nearby vertices. For the robust k-Steiner forest problem on trees and with uniform multiplicative increase factor for Stage 2 (also known as inflation), we present a constant approximation. We show APX-hardness of the robust min-cut problem (even with singleton-set scenarios), resolving an open question of (Dhamdhere et al. in Proc. of 46th Annual IEEE Symposium on Foundations of Computer Science (FOCS'05), pp. 367-378, 2005) and (Golovin et al. in Proc. of the 23rd Annual Symposium on Theoretical Aspects of Computer Science (STACS), 2006).
机译:我们研究无向图上组合优化问题的两阶段鲁棒变体,例如Steiner树,Steiner森林和无能力的设施位置。 Dhamdhere等人先前研究过的鲁棒优化问题。 (第46届IEEE年度计算机科学基础学术研讨会(FOCS'05),第367-378页,2005年),Golovin等。 (第23届计算机科学理论方面的年度专题讨论会(STACS),2006年)和Feige等人。 (第12届国际整数编程和组合优化会议,2007年,第439-453页)是两个阶段的计划问题,其中在第1阶段做出一些决定后才显示出需求。解决方案,以更高的成本满足给定的要求。例如,在鲁棒的&Steiner树问题中,一个人在阶段1中购买了一些边缘。然后,在阶段2中显示了k个终端,一个人必须以更高的成本购买更多的边缘,以完成阶段1解决方案以构建一个这些终端上的Steiner树。目的是使最坏情况下的总成本最小化。在本文中,我们关注隐式给出的指数情景的情况。场景由k个终端的任何子集(对于k-Steiner树),k个终端对的任何子集(对于k-Steiner林)或k个客户端的任何子集(对于设施位置)组成。 Feige等。 (第十二届国际整数编程和组合优化会议,2007年,第439-453页)给出了用于两类鲁棒问题的近似算法的基于LP的通用框架。它们的框架不能用于诸如k-Steiner树之类的网络设计问题(请参阅后面的阐述)。他们的框架可以用于解决设施位置问题,但是只能给出对数近似值。我们提出了健壮的k-Steiner树(具有场景的指数数量)和健壮的无能力设施定位问题的第一个恒定因子近似算法。我们的算法是组合的,基于猜测最佳成本和聚类以聚合附近的顶点。对于树木上健壮的k-Steiner森林问题,并且对于阶段2具有统一的乘数增加因子(也称为通货膨胀),我们提出一个恒定近似值。我们展示了鲁棒的最小割问题的APX硬度(即使在单例集情况下),解决了一个未解决的问题(Dhamdhere等人在第46届IEEE年度计算机科学基础学术研讨会(FOCS'05), (第367-378页,2005年)和(Golovin等人在“第23届计算机科学理论方面的年度专题讨论会(STACS),2006年)”中发表的论文。

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