具有层次结构的有向网络的基于健壮性的增长

IF 2.6 Q1 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
Niall Rodgers, Peter Tiňo and Samuel Johnson
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引用次数: 0

摘要

通过营养分析和非正态性等技术测量,许多真实的有向网络呈现出层次性和方向性,这一事实日益受到关注。我们提出了一个简单的生长网络模型,在这个模型中,连接到节点的概率是由基于节点间程度和适应度差异的优先附着机制来定义的。我们特别展示了基于程度的优先连接和节点适配性相互作用等机制如何导致出现在真实网络中观察到的层次性和方向性谱系。在这项工作中,我们研究了该模型与网络层次相关的各种特征,并通过营养分析进行了测量。这包括:(I)优先附着如何导致网络层次结构;(II)无标度度分布和网络层次结构如何共存;(III)节点适合度和营养级之间的相关性;(IV)适合度参数如何预测营养级不一致性,以及营养级差异分布与适合度差异分布的比较、(V) 营养级与度数不平衡之间的关系,以及处于适合度等级末端的节点的独特作用,以及 (VI) 适合度相互作用和基于度数的优先附着如何相互作用,以产生不同一致性和度数分布的网络。我们还举例说明了这项工作在分析真实历史网络时所产生的直觉。这项研究深入揭示了在有向网络中产生等级的简单机制,并量化了将营养分析作为真实网络分析工具的实用性和局限性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fitness-based growth of directed networks with hierarchy
Growing attention has been brought to the fact that many real directed networks exhibit hierarchy and directionality as measured through techniques like trophic analysis and non-normality. We propose a simple growing network model where the probability of connecting to a node is defined by a preferential attachment mechanism based on degree and the difference in fitness between nodes. In particular, we show how mechanisms such as degree-based preferential attachment and node fitness interactions can lead to the emergence of the spectrum of hierarchy and directionality observed in real networks. In this work, we study various features of this model relating to network hierarchy, as measured by trophic analysis. This includes (I) how preferential attachment can lead to network hierarchy, (II) how scale-free degree distributions and network hierarchy can coexist, (III) the correlation between node fitness and trophic level, (IV) how the fitness parameters can predict trophic incoherence and how the trophic level difference distribution compares to the fitness difference distribution, (V) the relationship between trophic level and degree imbalance and the unique role of nodes at the ends of the fitness hierarchy and (VI) how fitness interactions and degree-based preferential attachment can interplay to generate networks of varying coherence and degree distribution. We also provide an example of the intuition this work enables in the analysis of a real historical network. This work provides insight into simple mechanisms which can give rise to hierarchy in directed networks and quantifies the usefulness and limitations of using trophic analysis as an analysis tool for real networks.
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来源期刊
Journal of Physics Complexity
Journal of Physics Complexity Computer Science-Information Systems
CiteScore
4.30
自引率
11.10%
发文量
45
审稿时长
14 weeks
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