Wang Wen-Xu, Hu Bo, Zhou Tao, Wang Bing-Hong, Xie Yan-Bo
Nonlinear Science Center and Department of Modern Physics, University of Science and Technology of China, Hefei, 230026, People's Republic of China.
Phys Rev E Stat Nonlin Soft Matter Phys. 2005 Oct;72(4 Pt 2):046140. doi: 10.1103/PhysRevE.72.046140. Epub 2005 Oct 28.
For most networks, the connection between two nodes is the result of their mutual affinity and attachment. In this paper, we propose a mutual selection model to characterize the weighted networks. By introducing a general mechanism of mutual selection, the model can produce power-law distributions of degree, weight, and strength, as confirmed in many real networks. Moreover, we also obtained the nontrivial clustering coefficient C, degree assortativity coefficient r, and degree-strength correlation depending on a single parameter m. These results are supported by present empirical evidence. Studying the degree-dependent average clustering coefficient C(k) and the degree-dependent average nearest neighbors' degree k(nn)(k) also provide us with a better description of the hierarchies and organizational architecture of weighted networks.
对于大多数网络而言,两个节点之间的连接是它们相互亲和与关联的结果。在本文中,我们提出一种相互选择模型来刻画加权网络。通过引入一种通用的相互选择机制,该模型能够产生度、权重和强度的幂律分布,这在许多真实网络中都得到了证实。此外,我们还得到了取决于单个参数m的非平凡聚类系数C、度混合系数r以及度-强度相关性。这些结果得到了当前经验证据的支持。研究度依赖的平均聚类系数C(k)和度依赖的平均最近邻度k(nn)(k)也为我们提供了对加权网络层次结构和组织结构的更好描述。