Symbolic Regression for Approximating Graph Geodetic Number

Ahmad T. Anaqreh, B. G.-Tóth, T. Vinkó
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Abstract

Graph properties are certain attributes that could make the structure of the graph understandable. Occasionally, standard methods cannot work properly for calculating exact values of graph properties due to their huge computational complexity, especially for real-world graphs. In contrast, heuristics and metaheuristics are alternatives proved their ability to provide sufficient solutions in a reasonable time. Although in some cases, even heuristics are not efficient enough, where they need some not easily obtainable global information of the graph. The problem thus should be dealt in completely different way by trying to find features that related to the property and based on these data build a formula which can approximate the graph property. In this work, symbolic regression with an evolutionary algorithm called Cartesian Genetic Programming has been used to derive formulas capable to approximate the graph geodetic number which measures the minimal-cardinality set of vertices, such that all shortest paths between its elements cover every vertex of the graph. Finding the exact value of the geodetic number is known to be NP-hard for general graphs. The obtained formulas are tested on random and real-world graphs. It is demonstrated how various graph properties as training data can lead to diverse formulas with different accuracy. It is also investigated which training data are really related to each property.
近似图大地数的符号回归
图属性是可以使图的结构易于理解的某些属性。有时,标准方法由于其巨大的计算复杂性而不能正确地计算图属性的精确值,特别是对于现实世界的图。相比之下,启发式和元启发式被证明能够在合理的时间内提供足够的解决方案。尽管在某些情况下,即使是启发式也不够有效,因为它们需要一些不容易获得的图的全局信息。因此,这个问题应该以完全不同的方式处理,即试图找到与属性相关的特征,并基于这些数据构建一个可以近似图属性的公式。在这项工作中,符号回归与一种称为笛卡尔遗传规划的进化算法已被用于推导能够近似图测地数的公式,该公式测量顶点的最小基数集,使其元素之间的所有最短路径覆盖图的每个顶点。对于一般图来说,精确地求测地线数是np困难的。所得公式在随机图和实际图上进行了检验。演示了不同的图属性作为训练数据如何导致不同精度的不同公式。还研究了哪些训练数据与每个属性真正相关。
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