Papalexakis Evangelos, Hooi Bryan, Pelechrinis Konstantinos, Faloutsos Christos
Department of Computer Science, Carnegie Mellon University, Pittsburgh, PA, United States of America.
Machine Learning Department, Carnegie Mellon University, Pittsburgh, PA, United States of America.
PLoS One. 2016 Mar 14;11(3):e0151027. doi: 10.1371/journal.pone.0151027. eCollection 2016.
Complex networks have been shown to exhibit universal properties, with one of the most consistent patterns being the scale-free degree distribution, but are there regularities obeyed by the r-hop neighborhood in real networks? We answer this question by identifying another power-law pattern that describes the relationship between the fractions of node pairs C(r) within r hops and the hop count r. This scale-free distribution is pervasive and describes a large variety of networks, ranging from social and urban to technological and biological networks. In particular, inspired by the definition of the fractal correlation dimension D2 on a point-set, we consider the hop-count r to be the underlying distance metric between two vertices of the network, and we examine the scaling of C(r) with r. We find that this relationship follows a power-law in real networks within the range 2 ≤ r ≤ d, where d is the effective diameter of the network, that is, the 90-th percentile distance. We term this relationship as power-hop and the corresponding power-law exponent as power-hop exponent h. We provide theoretical justification for this pattern under successful existing network models, while we analyze a large set of real and synthetic network datasets and we show the pervasiveness of the power-hop.
复杂网络已被证明具有普遍属性,其中最一致的模式之一是无标度度分布,但真实网络中的r跳邻域是否遵循规律呢?我们通过识别另一种幂律模式来回答这个问题,该模式描述了r跳内节点对分数C(r)与跳数r之间的关系。这种无标度分布普遍存在,描述了从社会、城市到技术和生物网络等各种各样的网络。特别地,受点集上的分形关联维数D2定义的启发,我们将跳数r视为网络中两个顶点之间的潜在距离度量,并研究C(r)随r的标度。我们发现,在2≤r≤d的范围内,真实网络中这种关系遵循幂律,其中d是网络的有效直径,即第90百分位数距离。我们将这种关系称为幂跳,将相应的幂律指数称为幂跳指数h。我们在现有的成功网络模型下为这种模式提供了理论依据,同时分析了大量真实和合成网络数据集,并展示了幂跳的普遍性。