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A branch-and-bound algorithm for solving max-k-cut problem

机译:解决MAX-K-CUT问题的分支和绑定算法

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摘要

The max-k-cut problem is one of the most well-known combinatorial optimization problems. In this paper, we design an efficient branch-and-bound algorithm to solve the max-k-cut problem. We propose a semidefinite relaxation that is as tight as the conventional semidefinite relaxations in the literature, but is more suitable as a relaxation method in a branch-and-bound framework. We then develop a branch-and-bound algorithm that exploits the unique structure of the proposed semidefinite relaxation, and applies a branching method different from the one commonly used in the existing algorithms. The symmetric structure of the solution set of the max-k-cut problem is discussed, and a strategy is devised to reduce the redundancy of subproblems in the enumeration procedure. The numerical results show that the proposed algorithm is promising. It performs better than Gurobi on instances that have more than 350 edges, and is more efficient than the state-of-the-art algorithm bundleBC on certain types of test instances.
机译:Max-K-Cut问题是最着名的组合优化问题之一。在本文中,我们设计了一种高效的分支和绑定算法来解决MAX-K-CUT问题。我们提出了一个如同传统的半纤维放松在文献中紧凑的半纤维放松,但更适合作为分支框架框架中的弛豫方法。然后,我们开发了一种分支和绑定算法,该算法利用所提出的半纤维放宽的独特结构,并应用与现有算法中常用的分支方法不同。讨论了MAX-k切割问题的解决方案集的对称结构,设计了一种策略,以减少枚举过程中子问题的冗余。数值结果表明,所提出的算法很有前景。它在具有超过350边的实例上表现优于Gurobi,并且比某些类型的测试实例上的最先进的算法BundleBC更有效。

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