Primal Heuristic for the Linear Ordering Problem

Ravi Agrawal, E. Iranmanesh, Ramesh Krishnamurti
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引用次数: 2

Abstract

In this paper, we propose a new primal heuristic for the Linear Ordering Problem (LOP) that generates an integer feasible solution from the solution to the LP relaxation at each node of the branch-and-bound search tree. The heuristic first finds a partition of the set of vertices S into an ordered pair of subsets {S1,S2} such that the difference between the weights of all arcs from S1 to S2 and the weights of all arcs from S2 to S1 is maximized. It then assumes that all vertices in S1 precede all vertices in S2 thus decomposing the original problem instance into subproblems of smaller size i.e. on subsets S1 and S2. It recursively does so until the subproblems can be solved quickly using an MIP solver. The solution to the original problem instance is then constructed by concatenating the solutions to the subproblems. The heuristic is used to propose integer feasible solutions for the branch-and-bound algorithm. We also devise an alternate node selection strategy based on the heuristic solutions where we select the node with the best heuristic solution. We report the results of our experiments with the heuristic and the node selection strategy based on the heuristic.
线性排序问题的原始启发式
本文针对线性排序问题(LOP)提出了一种新的原始启发式算法,该算法从分支定界搜索树每个节点的LP松弛解生成整数可行解。启发式算法首先将顶点集S划分为有序的子集{S1,S2},使得从S1到S2的所有弧线的权值与从S2到S1的所有弧线的权值之差最大。然后假设S1中的所有顶点都先于S2中的所有顶点,从而将原始问题实例分解为更小的子问题,即在子集S1和S2上。它递归地这样做,直到可以使用MIP求解器快速解决子问题。然后通过连接子问题的解决方案来构造原始问题实例的解决方案。利用启发式算法给出了分支定界算法的整数可行解。我们还设计了一个基于启发式解决方案的备选节点选择策略,其中我们选择具有最佳启发式解决方案的节点。我们报告了启发式和基于启发式的节点选择策略的实验结果。
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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