Evolving random graph generators: A case for increased algorithmic primitive granularity

A. Pope, D. Tauritz, A. Kent
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引用次数: 14

Abstract

Random graph generation techniques provide an invaluable tool for studying graph related concepts. Unfortunately, traditional random graph models tend to produce artificial representations of real-world phenomenon. Manually developing customized random graph models for every application would require an unreasonable amount of time and effort. In this work, a platform is developed to automate the production of random graph generators that are tailored to specific applications. Elements of existing random graph generation techniques are used to create a set of graph-based primitive operations. A hyper-heuristic approach is employed that uses genetic programming to automatically construct random graph generators from this set of operations. This work improves upon similar research by increasing the level of algorithmic sophistication possible with evolved solutions, allowing more accurate modeling of subtle graph characteristics. The versatility of this approach is tested against existing methods and experimental results demonstrate the potential to outperform conventional and state of the art techniques for specific applications.
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进化随机图生成器:增加算法原语粒度的一个例子
随机图生成技术为研究图相关概念提供了宝贵的工具。不幸的是,传统的随机图模型倾向于产生对现实世界现象的人工表示。为每个应用程序手动开发定制的随机图模型需要大量的时间和精力。在这项工作中,开发了一个平台来自动生成适合特定应用的随机图形生成器。使用现有随机图生成技术的元素来创建一组基于图的基本操作。采用一种超启发式方法,利用遗传规划从这组操作中自动构造随机图生成器。这项工作在类似研究的基础上进行了改进,通过改进的解决方案提高了算法的复杂程度,允许更准确地建模微妙的图形特征。该方法的通用性与现有方法进行了测试,实验结果表明,在特定应用中,该方法具有优于传统和最先进技术的潜力。
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