A universal representation for quantifying the significance of higher-order structures within networks under complex propagation mechanisms

IF 4.6 2区 物理与天体物理 Q1 PHYSICS, MULTIDISCIPLINARY Chinese Journal of Physics Pub Date : 2025-06-01 Epub Date: 2025-04-12 DOI:10.1016/j.cjph.2025.04.012
Jiahui Song, Zaiwu Gong
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Abstract

With the increasing complexity of epidemic propagation, traditional metrics for assessing critical components of networks often fail to adequately capture the higher-order structural characteristics of networks under complex propagation mechanisms. These higher-order features significantly influence the speed, scale, and pathways of propagation through synergistic reinforcement mechanisms. Based on existing complex propagation models, this study introduces the concept of “multiple infections” and constructs a universal representation method to quantify the importance of higher-order structures through the closure approximation of lower-order structures. The core innovation of this method lies in the introduction of an enhancement factor, which explicitly characterizes the nonlinear growth of propagation rates when infected nodes participate in higher-order interactions. Additionally, a probabilistic closure framework is proposed to transform the dynamic characteristics of higher-order structures into computable mathematical expressions, supporting the dimensionality reduction representation of higher-order structures at arbitrary scales. We specifically apply the proposed representation for quantifying the importance of higher-order structures to links and fully connected triplets (i.e., triangles), comparing it with existing metrics for link and triangle importance. By analyzing the degree of suppression of infection scale and complex propagation rates, the accuracy of identification, the efficiency of disrupting higher-order structures, and monotonicity, the superiority of the proposed quantification method is validated. The findings of this research contribute to a deeper understanding of the structural characteristics and dynamic behaviors of networks in the context of complex transmission. By introducing a generalized dynamic representation of higher-order structures, we provide researchers in fields such as network science, social network analysis, and transmission modeling with new insights and tools, thereby promoting further advancements in related areas and offering more reliable theoretical support for practical applications.

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复杂传播机制下网络中高阶结构重要性量化的通用表示
随着流行病传播的复杂性日益增加,传统的评估网络关键组成部分的指标往往不能充分捕捉复杂传播机制下网络的高阶结构特征。这些高阶特征通过协同强化机制显著影响传播的速度、规模和途径。在现有复杂传播模型的基础上,引入“多重感染”的概念,构建了一种通用表示方法,通过对低阶结构的闭包逼近来量化高阶结构的重要性。该方法的核心创新在于引入了增强因子,该因子明确表征了感染节点参与高阶相互作用时传播速率的非线性增长。此外,提出了一个概率闭包框架,将高阶结构的动态特性转化为可计算的数学表达式,支持任意尺度下高阶结构的降维表示。我们特别应用提出的表示来量化高阶结构对链接和全连接三元组(即三角形)的重要性,并将其与现有的链接和三角形重要性度量进行比较。通过对感染规模和复杂传播速率的抑制程度、识别的准确性、破坏高阶结构的效率和单调性的分析,验证了所提量化方法的优越性。研究结果有助于我们对复杂传播背景下网络的结构特征和动态行为有更深入的认识。通过引入高阶结构的广义动态表示,为网络科学、社会网络分析和传输建模等领域的研究人员提供了新的见解和工具,从而推动了相关领域的进一步发展,为实际应用提供了更可靠的理论支持。
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来源期刊
Chinese Journal of Physics
Chinese Journal of Physics 物理-物理:综合
CiteScore
8.50
自引率
10.00%
发文量
361
审稿时长
44 days
期刊介绍: The Chinese Journal of Physics publishes important advances in various branches in physics, including statistical and biophysical physics, condensed matter physics, atomic/molecular physics, optics, particle physics and nuclear physics. The editors welcome manuscripts on: -General Physics: Statistical and Quantum Mechanics, etc.- Gravitation and Astrophysics- Elementary Particles and Fields- Nuclear Physics- Atomic, Molecular, and Optical Physics- Quantum Information and Quantum Computation- Fluid Dynamics, Nonlinear Dynamics, Chaos, and Complex Networks- Plasma and Beam Physics- Condensed Matter: Structure, etc.- Condensed Matter: Electronic Properties, etc.- Polymer, Soft Matter, Biological, and Interdisciplinary Physics. CJP publishes regular research papers, feature articles and review papers.
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