首页> 外文会议>Foundations of Computer Science, 2004. Proceedings. 45th Annual IEEE Symposium on >An edge in time saves nine: LP rounding approximation algorithms for stochastic network design
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An edge in time saves nine: LP rounding approximation algorithms for stochastic network design

机译:时间的优势节省了九个:用于随机网络设计的LP舍入近似算法

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Real-world networks often need to be designed under uncertainty, with only partial information and predictions of demand available at the outset of the design process. The field of stochastic optimization deals with such problems where the forecasts are specified in terms of probability distributions of future data. In this paper, we broaden the set of models as well as the techniques being considered for approximating stochastic optimization problems. For example, we look at stochastic models where the cost of the elements is correlated to the set of realized demands, and risk-averse models where upper bounds are placed on the amount spent in each of the stages. These generalized models require new techniques, and our solutions are based on a novel combination of the primal-dual method truncated based on optimal LP relaxation values, followed by a tree-rounding stage. We use these to give constant-factor approximation algorithms for the stochastic Steiner tree and single sink network design problems in these generalized models.
机译:现实世界中的网络通常需要在不确定的情况下进行设计,在设计过程之初就只能获得部分信息和需求预测。随机优化领域处理这样的问题,其中根据未来数据的概率分布指定了预测。在本文中,我们拓宽了模型集以及正在考虑用于逼近随机优化问题的技术。例如,我们看一下随机模型,其中元素的成本与已实现需求的集合相关;而规避风险的模型,在每个阶段花费的数量上设置上限。这些广义模型需要新技术,并且我们的解决方案基于基于最佳LP松弛值截断的原始对偶方法的新颖组合,然后进行了树木舍入阶段。我们使用这些模型为这些广义模型中的随机Steiner树和单宿网络设计问题提供恒定因子近似算法。

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