混合整数规划的分解分支

Oper. Res. Pub Date : 2022-01-25 DOI:10.1287/opre.2021.2210
Barış Yıldız, N. Boland, M. Savelsbergh
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引用次数: 4

摘要

混合整数规划的应用可以在许多行业中找到,例如交通、医疗保健、能源和金融,它们的经济影响是显著的。众所周知,混合整数程序(MIPs)很难求解。他们面临的挑战继续刺激着设计和实施能够更好地解决这些问题的高效和有效技术的研究。在这项研究中,我们引入了一种新的和强大的方法来解决某些类型的混合整数规划(MIPs):分解分支。分支定界和分解是解决MIPs的两个重要且广泛使用的技术,构成了它的基础。用加权集覆盖问题和带有分配范围约束的区化p中值设施位置问题实例进行的计算实验证明了它的有效性:它探索的节点要少得多,并且比商业求解器和自动dantzigg - wolfe方法快几个数量级。
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Decomposition Branching for Mixed Integer Programming
Applications of mixed integer programming can be found in many industries, such as transportation, healthcare, energy, and finance, and their economic impact is significant. It is also well known that mixed integer programs (MIPs) can be very difficult to solve. Their challenge continues to stimulate research in the design and implementation of efficient and effective techniques that can better solve them. In this study, we introduce a novel and powerful approach for solving certain classes of mixed integer programs (MIPs): decomposition branching. Two seminal and widely used techniques for solving MIPs, branch-and-bound and decomposition, form its foundation. Computational experiments with instances of a weighted set covering problem and a regionalized p-median facility location problem with assignment range constraints demonstrate its efficacy: it explores far fewer nodes and can be orders of magnitude faster than a commercial solver and an automatic Dantzig-Wolfe approach.
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