Network Model with Scale-Free, High Clustering Coefficients, and Small-World Properties

Chuankui Yan
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Abstract

Networks are prevalent in real life, and the study of network evolution models is very important for understanding the nature and laws of real networks. The distribution of the initial degree of nodes in existing classical models is constant or uniform. The model we proposed shows binomial distribution, and it is consistent with real network data. The theoretical analysis shows that the proposed model is scale-free at different probability values and its clustering coefficients are adjustable, and the Barabasi-Albert model is a special case of p = 0 in our model. In addition, the analytical results of the clustering coefficients can be estimated using mean-field theory. The mean clustering coefficients calculated from the simulated data and the analytical results tend to be stable. The model also exhibits small-world characteristics and has good reproducibility for short distances of real networks. Our model combines three network characteristics, scale-free, high clustering coefficients, and small-world characteristics, which is a significant improvement over traditional models with only a single or two characteristics. The theoretical analysis procedure can be used as a theoretical reference for various network models to study the estimation of clustering coefficients. The existence of stable equilibrium points of the model explains the controversy of whether scale-free is universal or not, and this explanation provides a new way of thinking to understand the problem.
具有无标度、高聚类系数和小世界性质的网络模型
网络在现实生活中普遍存在,网络演化模型的研究对于理解现实网络的性质和规律非常重要。在现有的经典模型中,节点初始度的分布是常数或均匀的。该模型呈现二项分布,与实际网络数据一致。理论分析表明,该模型在不同概率值下是无标度的,聚类系数是可调的,Barabasi-Albert模型是模型中p = 0的特例。此外,利用平均场理论可以估计聚类系数的分析结果。由模拟数据计算的平均聚类系数与分析结果趋于稳定。该模型还具有小世界特性,对实际网络的短距离具有良好的再现性。我们的模型结合了三种网络特征,即无标度、高聚类系数和小世界特征,与传统的只有一个或两个特征的模型相比,这是一个显著的改进。理论分析过程可作为各种网络模型研究聚类系数估计的理论参考。模型稳定平衡点的存在解释了无标度是否普遍存在的争议,这一解释为理解问题提供了一种新的思路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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