Selecting suitable solution strategies for Classes of graph coloring instances using data mining

N. Insani, K. Smith‐Miles, Davaatseren Baatar
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引用次数: 2

Abstract

The Maximal Independent Set (MIS) formulation tackles the graph coloring problem (GCP) as the partitioning of vertices of a graph into a minimum number of maximal independent sets as each MIS can be assigned a unique color. Mehrotra and Trick [5] solved the MIS formulation with an exact IP approach, but they were restricted to solving smaller or easier instances. For harder instances, it might be impossible to get the optimal solution within a reasonable computation time. We develop a heuristic algorithm, hoping that we can solve these problems in more reasonable time. However, though heuristics can find a near-optimal solution extremely fast compared to the exact approaches, there is still significant variations in performance that can only be explained by the fact that certain structures or properties in graphs may be better suited to some heuristics more than others. Selecting the best algorithm on average across all instances does not help us pick the best one for a particular instance. The need to understand how the best heuristic for a particular class of instance depends on these graph properties is an important issue. In this research, we use data mining to select the best solution strategies for classes of graph coloring instances.
利用数据挖掘选择适合的图着色实例类的解决策略
最大独立集(MIS)公式处理图着色问题(GCP),将图的顶点划分为最小数量的最大独立集,因为每个MIS可以分配一个唯一的颜色。Mehrotra和Trick[5]用精确的IP方法解决了MIS公式,但他们仅限于解决较小或更容易的实例。对于较困难的实例,可能不可能在合理的计算时间内得到最优解。我们开发了一种启发式算法,希望能在更合理的时间内解决这些问题。然而,尽管启发式方法可以比精确的方法更快地找到接近最优的解决方案,但仍然存在显著的性能差异,这只能解释为图形中的某些结构或属性可能比其他启发式方法更适合某些结构或属性。在所有实例中平均选择最佳算法并不能帮助我们为特定实例选择最佳算法。了解特定实例类的最佳启发式如何依赖于这些图属性是一个重要的问题。在本研究中,我们使用数据挖掘来选择图着色实例类的最佳解决策略。
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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