Diffusion on assortative networks: from mean-field to agent-based, via Newman rewiring

IF 1.6 4区 物理与天体物理 Q3 PHYSICS, CONDENSED MATTER The European Physical Journal B Pub Date : 2024-10-21 DOI:10.1140/epjb/s10051-024-00797-y
L. Di Lucchio, G. Modanese
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Abstract

In mathematical models of epidemic diffusion on networks based upon systems of differential equations, it is convenient to use the heterogeneous mean field approximation (HMF) because it allows to write one single equation for all nodes of a certain degree k, each one virtually present with a probability given by the degree distribution P(k). The two-point correlations between nodes are defined by the matrix P(h|k), which can typically be uncorrelated, assortative or disassortative. After a brief review of this approach and of the results obtained within this approximation for the Bass diffusion model, in this work, we look at the transition from the HMF approximation to the description of diffusion through the dynamics of single nodes, first still with differential equations, and then with agent-based models. For this purpose, one needs a method for the explicit construction of ensembles of random networks or scale-free networks having a pre-defined degree distribution (configuration model) and a method for rewiring these networks towards some desired or “target” degree correlations (Newman rewiring). We describe Python-NetworkX codes implemented for the two methods in our recent work and compare some of the results obtained in the HMF approximation with the new results obtained with statistical ensembles of real networks, including the case of signed networks.

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同类网络上的扩散:通过纽曼重新布线,从均值场到基于代理的扩散
在基于微分方程系统的网络流行病扩散数学模型中,使用异质均值场近似(HMF)是很方便的,因为它可以为具有一定度数 k 的所有节点写出一个单一方程,每个节点实际上存在的概率由度数分布 P(k) 给出。节点之间的两点相关性由矩阵 P(h|k) 定义,通常可以是非相关、同类或异类。在简要回顾了这一方法以及巴斯扩散模型在这一近似方法下获得的结果之后,我们将在本研究中探讨从 HMF 近似方法过渡到通过单个节点的动态来描述扩散的方法,首先仍然使用微分方程,然后使用基于代理的模型。为此,我们需要一种方法来明确构建具有预定义度分布的随机网络或无标度网络的集合(配置模型),并需要一种方法来重新布线这些网络,使其达到某些期望或 "目标 "度相关性(纽曼重新布线)。我们将介绍在最近的工作中为这两种方法实现的 Python-NetworkX 代码,并比较在 HMF 近似中获得的一些结果和使用真实网络(包括有符号网络)统计集合获得的新结果。
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来源期刊
The European Physical Journal B
The European Physical Journal B 物理-物理:凝聚态物理
CiteScore
2.80
自引率
6.20%
发文量
184
审稿时长
5.1 months
期刊介绍: Solid State and Materials; Mesoscopic and Nanoscale Systems; Computational Methods; Statistical and Nonlinear Physics
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