Emerging properties of the degree distribution in large non-growing networks

Jonathan Franceschi, Lorenzo Pareschi, Mattia Zanella
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Abstract

The degree distribution is a key statistical indicator in network theory, often used to understand how information spreads across connected nodes. In this paper, we focus on non-growing networks formed through a rewiring algorithm and develop kinetic Boltzmann-type models to capture the emergence of degree distributions that characterize both preferential attachment networks and random networks. Under a suitable mean-field scaling, these models reduce to a Fokker-Planck-type partial differential equation with an affine diffusion coefficient, that is consistent with a well-established master equation for discrete rewiring processes. We further analyze the convergence to equilibrium for this class of Fokker-Planck equations, demonstrating how different regimes -- ranging from exponential to algebraic rates -- depend on network parameters. Our results provide a unified framework for modeling degree distributions in non-growing networks and offer insights into the long-time behavior of such systems.
大型非增长型网络度分布的新特性
度分布是网络理论中的一个关键统计指标,通常用于理解信息如何在连接节点间传播。在本文中,我们重点研究了通过重新布线算法形成的非增长网络,并建立了动力学玻尔兹曼型模型,以捕捉作为优先连接网络和随机网络特征的度分布的出现。在合适的均场缩放条件下,这些模型简化为具有仿射扩散系数的福克-普朗克偏微分方程,这与离散重布线过程的成熟主方程是一致的。我们进一步分析了这一类福克-普朗克方程向平衡的收敛,证明了从指数速率到代数速率的不同状态是如何依赖于网络参数的。我们的结果为非增长网络中的学位分布建模提供了一个统一的框架,并为此类系统的长期行为提供了见解。
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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