Litvak Nelly, van der Hofstad Remco
University of Twente, Faculty of Electrical Engineering, Mathematics and Computer Sciences, P.O. Box 217, 7500 AE, Enschede, The Netherlands.
Phys Rev E Stat Nonlin Soft Matter Phys. 2013 Feb;87(2):022801. doi: 10.1103/PhysRevE.87.022801. Epub 2013 Feb 4.
Mixing patterns in large self-organizing networks, such as the Internet, the World Wide Web, and social and biological networks, are often characterized by degree-degree dependencies between neighboring nodes. In this paper, we propose a new way of measuring degree-degree dependencies. One of the problems with the commonly used assortativity coefficient is that in disassortative networks its magnitude decreases with the network size. We mathematically explain this phenomenon and validate the results on synthetic graphs and real-world network data. As an alternative, we suggest to use rank correlation measures such as Spearman's ρ. Our experiments convincingly show that Spearman's ρ produces consistent values in graphs of different sizes but similar structure, and it is able to reveal strong (positive or negative) dependencies in large graphs. In particular, we discover much stronger negative degree-degree dependencies in Web graphs than was previously thought. Rank correlations allow us to compare the assortativity of networks of different sizes, which is impossible with the assortativity coefficient due to its genuine dependence on the network size. We conclude that rank correlations provide a suitable and informative method for uncovering network mixing patterns.
诸如互联网、万维网以及社会和生物网络等大型自组织网络中的混合模式,通常以相邻节点之间的度度相关性为特征。在本文中,我们提出了一种测量度度相关性的新方法。常用的 assortativity 系数存在的一个问题是,在异配网络中,其大小会随着网络规模的增大而减小。我们从数学上解释了这一现象,并在合成图和真实世界网络数据上验证了结果。作为一种替代方法,我们建议使用秩相关度量,如 Spearman's ρ。我们的实验令人信服地表明,Spearman's ρ 在不同大小但结构相似的图中能产生一致的值,并且它能够揭示大型图中的强(正或负)相关性。特别是,我们发现网页图中的负度度相关性比之前认为的要强得多。秩相关使我们能够比较不同大小网络的 assortativity,而 assortativity 系数由于其对网络规模的实际依赖性,无法做到这一点。我们得出结论,秩相关为揭示网络混合模式提供了一种合适且信息丰富的方法。