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Algorithms for the Minmax Regret Path problem with interval data

机译:间隔数据的MinMax后悔路径问题的算法

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The Shortest Path in networks is an important problem incombinatorial optimization and has many applications in areas like telecommunications and transportation. It is known that this problem is easy to solve in its classic deterministic version, but it is also known that it is an NP-Hard problem for several generalizations. The Shortest Path Problem consists in finding a simple path connecting a source node and a terminal node in an arc weighted directed network. In some real-world situations the weights are not completely known and then this problem is transformed into an optimization one under uncertainty. It is assumed that an interval estimate is given for each arc length and no further information about the statistical distribution of the weights is known. Uncertainty has been modeled in different ways in optimization. Our aim in this paper is to study the Minmax Regret path with interval data problem by presenting a new exact branch and cut algorithm and, additionally, new heuristics. A set of difficult and large size instances are defined and computational experiments are conducted for the analysis of the different approaches designed to solve the problem. The main contribution of our paper is to provide an assessment of the performance of the proposed algorithms and an empirical evidence of the superiority of a simulated annealing approach based on a new neighborhood over the other heuristics proposed. (C) 2018 Elsevier Inc. All rights reserved.
机译:网络中最短的路径是重要的问题,并在电信和运输等领域拥有许多应用。众所周知,在经典的确定性版本中易于解决这个问题,但也知道它是几个概括的NP难题。最短路径问题在于找到连接源节点和弧度加权定向网络中的终端节点的简单路径。在一些真实世界的情况下,权重没有完全已知,然后在不确定度下将该问题转换为优化。假设对每个弧长给出间隔估计,并且没有知道关于权重的统计分布的进一步信息。不确定性已经以不同的方式进行了建模。我们的目标是通过呈现新的精确分支和切割算法,并另外,新启发式研究MinMax悔恨路径。定义了一组困难和大尺寸的实例,并进行了计算实验,用于分析旨在解决问题的不同方法。本文的主要贡献是评估提出算法的表现和基于建议其他启发式的新街区的模拟退火方法的优势的经验证据。 (c)2018年Elsevier Inc.保留所有权利。

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