Kartun-Giles Alexander P, Krioukov Dmitri, Gleeson James P, Moreno Yamir, Bianconi Ginestra
School of Mathematical Sciences, Queen Mary University of London, London E1 4NS, UK.
Departments of Physics, Mathematics, and Electrical & Computer Engineering, Northeastern University, Boston 02120, MA, USA.
Entropy (Basel). 2018 Apr 7;20(4):257. doi: 10.3390/e20040257.
A projective network model is a model that enables predictions to be made based on a subsample of the network data, with the predictions remaining unchanged if a larger sample is taken into consideration. An exchangeable model is a model that does not depend on the order in which nodes are sampled. Despite a large variety of non-equilibrium (growing) and equilibrium (static) sparse complex network models that are widely used in network science, how to reconcile sparseness (constant average degree) with the desired statistical properties of projectivity and exchangeability is currently an outstanding scientific problem. Here we propose a network process with hidden variables which is projective and can generate sparse power-law networks. Despite the model not being exchangeable, it can be closely related to exchangeable uncorrelated networks as indicated by its information theory characterization and its network entropy. The use of the proposed network process as a null model is here tested on real data, indicating that the model offers a promising avenue for statistical network modelling.
投射网络模型是一种能够基于网络数据的子样本进行预测的模型,并且如果考虑更大的样本,预测结果保持不变。可交换模型是一种不依赖于节点采样顺序的模型。尽管在网络科学中广泛使用了各种各样的非平衡(增长型)和平衡(静态)稀疏复杂网络模型,但如何使稀疏性(恒定平均度)与投射性和可交换性等所需统计特性相协调,目前仍是一个突出的科学问题。在此,我们提出一种具有隐藏变量的网络过程,它具有投射性,能够生成稀疏幂律网络。尽管该模型不可交换,但从其信息论特征和网络熵来看,它与可交换的不相关网络密切相关。本文将所提出的网络过程用作零模型对真实数据进行了测试,结果表明该模型为统计网络建模提供了一条有前景的途径。