SAT-Boosted Tabu Search for Coloring Massive Graphs

Q2 Mathematics
André Schidler, Stefan Szeider
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引用次数: 0

Abstract

Graph coloring is the problem of coloring the vertices of a graph with as few colors as possible, avoiding monochromatic edges. It is one of the most fundamental NP-hard computational problems. For decades researchers have developed exact and heuristic methods for graph coloring. While methods based on propositional satisfiability (SAT) feature prominently among these exact methods, the encoding size is prohibitive for large graphs. For such graphs, heuristic methods have been proposed, with tabu search among the most successful ones. In this article, we enhance tabu search for graph coloring within the SAT-based local improvement (SLIM) framework. Our hybrid algorithm incrementally improves a candidate solution by repeatedly selecting small subgraphs and coloring them optimally with a SAT solver. This approach scales to dense graphs with several hundred thousand vertices and over 1.5 billion edges. Our experimental evaluation shows that our hybrid algorithm beats state-of-the-art methods on large dense graphs.
大规模图着色的sat增强禁忌搜索
图的着色问题是用尽可能少的颜色着色图的顶点,避免单色边。它是最基本的NP-hard计算问题之一。几十年来,研究人员开发了精确和启发式的图着色方法。虽然基于命题可满足性(SAT)的方法在这些精确方法中具有突出的特点,但编码大小对于大型图来说是令人望而却步的。对于这样的图,已经提出了启发式方法,禁忌搜索是最成功的方法之一。本文在基于sat的局部改进(SLIM)框架中增强了图着色的禁忌搜索。我们的混合算法通过重复选择小子图并使用SAT求解器对其进行最佳着色来逐步改进候选解。这种方法可以扩展到具有数十万个顶点和超过15亿个边的密集图。我们的实验评估表明,我们的混合算法在大型密集图上优于最先进的方法。
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来源期刊
Journal of Experimental Algorithmics
Journal of Experimental Algorithmics Mathematics-Theoretical Computer Science
CiteScore
3.10
自引率
0.00%
发文量
29
期刊介绍: The ACM JEA is a high-quality, refereed, archival journal devoted to the study of discrete algorithms and data structures through a combination of experimentation and classical analysis and design techniques. It focuses on the following areas in algorithms and data structures: ■combinatorial optimization ■computational biology ■computational geometry ■graph manipulation ■graphics ■heuristics ■network design ■parallel processing ■routing and scheduling ■searching and sorting ■VLSI design
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