Zlatić Vinko, Ghoshal Gourab, Caldarelli Guido
CNR-INFM Centro SMC Dipartimento di Fisica, Università di Roma Sapienza, Piazzale A Moro 5, 00185 Roma, Italy.
Phys Rev E Stat Nonlin Soft Matter Phys. 2009 Sep;80(3 Pt 2):036118. doi: 10.1103/PhysRevE.80.036118. Epub 2009 Sep 25.
Recent years have witnessed the emergence of a new class of social networks, which require us to move beyond previously employed representations of complex graph structures. A notable example is that of the folksonomy, an online process where users collaboratively employ tags to resources to impart structure to an otherwise undifferentiated database. In a recent paper, we proposed a mathematical model that represents these structures as tripartite hypergraphs and defined basic topological quantities of interest. In this paper, we extend our model by defining additional quantities such as edge distributions, vertex similarity and correlations as well as clustering. We then empirically measure these quantities on two real life folksonomies, the popular online photo sharing site Flickr and the bookmarking site CiteULike. We find that these systems share similar qualitative features with the majority of complex networks that have been previously studied. We propose that the quantities and methodology described here can be used as a standard tool in measuring the structure of tagged networks.
近年来,一类新型社交网络应运而生,这要求我们摒弃以往用于表示复杂图结构的方法。一个显著的例子是大众分类法,它是一种在线过程,用户通过协作给资源添加标签,从而为原本无差别的数据库赋予结构。在最近的一篇论文中,我们提出了一个数学模型,将这些结构表示为三部超图,并定义了相关的基本拓扑量。在本文中,我们通过定义诸如边分布、顶点相似度和相关性以及聚类等附加量来扩展我们的模型。然后,我们在两个真实的大众分类法系统上对这些量进行实证测量,这两个系统分别是广受欢迎的在线照片分享网站Flickr和书签网站CiteULike。我们发现,这些系统与之前研究过的大多数复杂网络具有相似的定性特征。我们提出,这里描述的量和方法可以用作测量带标签网络结构的标准工具。