Research on fractal networks is a dynamically growing field of network science. A central issue is to analyze fractality with the so-called box-covering method. As this problem is known to be NP-hard, a plethora of approximating algorithms have been proposed throughout the years. This study aims to establish a unified framework for comparing approximating box-covering algorithms by collecting, implementing, and evaluating these methods in various aspects including running time and approximation ability. This work might also serve as a reference for both researchers and practitioners, allowing fast selection from a rich collection of box-covering algorithms with a publicly available codebase.
翻译:分形网络研究是一个动态增长的网络科学领域。 中心问题是分析与所谓箱盖法的分形。 由于这个问题已知为NP硬型,多年来一直提议采用大量近似一致的算法。 这项研究的目的是建立一个统一框架,通过收集、实施和评价这些方法的各个方面,包括运行时间和近似能力,比较相近的箱套式算法。 这项工作也可以作为研究人员和从业人员的参考,以便快速从大量具有公开代码库的箱套式算法中挑选。