An Attention-Based Method for the Minimum Vertex Cover Problem on Complex Networks

Algorithms Pub Date : 2024-02-06 DOI:10.3390/a17020072
Giorgio Lazzarinetti, Riccardo Dondi, Sara Manzoni, I. Zoppis
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Abstract

Solving combinatorial problems on complex networks represents a primary issue which, on a large scale, requires the use of heuristics and approximate algorithms. Recently, neural methods have been proposed in this context to find feasible solutions for relevant computational problems over graphs. However, such methods have some drawbacks: (1) they use the same neural architecture for different combinatorial problems without introducing customizations that reflects the specificity of each problem; (2) they only use a nodes local information to compute the solution; (3) they do not take advantage of common heuristics or exact algorithms. Following this interest, in this research we address these three main points by designing a customized attention-based mechanism that uses both local and global information from the adjacency matrix to find approximate solutions for the Minimum Vertex Cover Problem. We evaluate our proposal with respect to a fast two-factor approximation algorithm and a widely adopted state-of-the-art heuristic both on synthetically generated instances and on benchmark graphs with different scales. Experimental results demonstrate that, on the one hand, the proposed methodology is able to outperform both the two-factor approximation algorithm and the heuristic on the test datasets, scaling even better than the heuristic with harder instances and, on the other hand, is able to provide a representation of the nodes which reflects the combinatorial structure of the problem.
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基于注意力的复杂网络最小顶点覆盖问题解决方法
解决复杂网络上的组合问题是一个首要问题,在很大程度上需要使用启发式和近似算法。最近,有人在这方面提出了神经方法,以寻找图上相关计算问题的可行解决方案。然而,这些方法存在一些缺点:(1) 它们使用相同的神经架构来处理不同的组合问题,而没有根据每个问题的特殊性进行定制;(2) 它们只使用节点的局部信息来计算解决方案;(3) 它们没有利用常见的启发式或精确算法。基于这种兴趣,我们在本研究中针对这三个要点,设计了一种基于注意力的定制机制,利用邻接矩阵中的局部和全局信息,为最小顶点覆盖问题找到近似解。我们在合成生成的实例和不同规模的基准图上评估了我们的建议与快速双因素近似算法和广泛采用的最先进启发式算法的比较。实验结果表明,一方面,所提出的方法在测试数据集上的表现优于双因素近似算法和启发式算法,在更难的实例上甚至比启发式算法更好;另一方面,所提出的方法能够提供反映问题组合结构的节点表示。
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