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Improving the Held and Karp Approach with Constraint Programming

机译:用约束规划改善持有和卡路方法

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Held and Karp have proposed, in the early 1970s, a relaxation for the Traveling Salesman Problem (TSP) as well as a branch-and-bound procedure that can solve small to modest-size instances to optimality [4, 5]. It has been shown that the Held-Karp relaxation produces very tight bounds in practice, and this relaxation is therefore applied in TSP solvers such as Concorde [1]. In this short paper we show that the Held-Karp approach can benefit from well-known techniques in Constraint Programming (CP) such as domain filtering and constraint propagation. Namely, we show that filtering algorithms developed for the weighted spanning tree constraint [3, 8] can be adapted to the context of the Held and Karp procedure. In addition to the adaptation of existing algorithms, we introduce a special-purpose filtering algorithm based on the underlying mechanisms used in Prim's algorithm [7]. Finally, we explored two different branching schemes to close the integrality gap. Our initial experimental results indicate that the addition of the CP techniques to the Held-Karp method can be very effective. The paper is organized as follows: section 2 describes the Held-Karp approach while section 3 gives some insights on the Constraint Programming techniques and branching scheme used. In section 4 we demonstrate, through preliminary experiments, the impact of using CP in combination with Held and Karp based branch-and-bound on small to modest-size instances from the TSPlib.
机译:在20世纪70年代初,举行和卡普已经提出,为旅行推销员问题(TSP)以及可以解决小于适度大小的实例的分支和绑定程序,以最优者[4,5]。已经表明,持有的Karp弛豫在实践中产生非常紧张的界限,因此这种弛豫适用于诸如Concorde [1]的TSP溶剂中。在这篇简短的论文中,我们表明,持有KARP方法可以从约束编程(CP)中的众所周知的技术中受益,例如域滤波和约束传播。即,我们表明为加权生成树约束[3,8]开发的过滤算法可以适用于所持和KARP过程的上下文。除了适应现有算法外,我们还基于Prim算法中使用的基础机制来介绍一种专用过滤算法[7]。最后,我们探讨了两种不同的分支方案来缩小完整性差距。我们初步的实验结果表明,向持有KARP方法添加CP技术可以非常有效。本文组织如下:第2节描述了持有KARP方法,而第3节对所使用的约束规划技术和分支方案提供了一些见解。在第4节中,我们通过初步实验证明使用CP与持有的和基于KARP的分支和绑定的分支与TSPLIB的冲击和绑定的影响。

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