论文标题
网络比较和集结图距离
Network comparison and the within-ensemble graph distance
论文作者
论文摘要
量化网络之间的差异是网络科学中一个具有挑战性且持续存在的问题。近年来,已经引入了多种多样化的临时解决方案。在这里,我们提出,随机网络的简单合奏(例如ERDőS-Rényi图,随机几何图,瓦茨 - 史图加兹图,配置模型和优先附件网络)是自然基准标记网络比较方法。此外,我们表明,从生成模型独立采样的两个网络之间的预期距离是一个有用的属性,可封装该模型的许多关键特征。为了说明我们的结果,我们使用20次距离测量值计算了经典网络模型(以及几个参数化的)内部图形距离和相关数量,该距离通常用于比较图形。内置的图形距离为图形距离开发人员提供了一个新的框架,以更好地了解其创作,并让从业者更好地为其特定任务选择适当的工具。
Quantifying the differences between networks is a challenging and ever-present problem in network science. In recent years a multitude of diverse, ad hoc solutions to this problem have been introduced. Here we propose that simple and well-understood ensembles of random networks (such as Erdős-Rényi graphs, random geometric graphs, Watts-Strogatz graphs, the configuration model, and preferential attachment networks) are natural benchmarks for network comparison methods. Moreover, we show that the expected distance between two networks independently sampled from a generative model is a useful property that encapsulates many key features of that model. To illustrate our results, we calculate this within-ensemble graph distance and related quantities for classic network models (and several parameterizations thereof) using 20 distance measures commonly used to compare graphs. The within-ensemble graph distance provides a new framework for developers of graph distances to better understand their creations and for practitioners to better choose an appropriate tool for their particular task.