Ising dynamics on multilayer networks with heterogeneous layers.

ArXiv Pub Date : 2025-09-24
Suman S Kulkarni, Christopher W Lynn, Mason A Porter, Dani S Bassett
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Abstract

Multilayer networks provide a framework to study complex systems with multiple types of interactions, multiple dynamical processes, and/or multiple subsystems. When studying a dynamical process on a multilayer network, it is important to consider how both layer structure and heterogeneity across layers impacts the overall dynamics. As a concrete example, we study Ising dynamics on multilayer networks and investigate how network structure affects its qualitative features. We focus primarily on multiplex networks, which are multilayer networks in which interlayer edges occur only between manifestations of the same entity on different layers, although we also consider one empirical example with a more general multilayer structure. We use numerical simulations and a mean-field approximation to examine the steady-state behavior of the Ising dynamics as a function of temperature (which is a key model parameter) for a variety of two-layer multilayer networks from both models and empirical data. We examine both the steady-state behavior and a metastable state in which the two layers are anti-aligned, and we explore the effects of interlayer coupling strength and structural heterogeneity. In synthetic multilayer networks with core--periphery structure, we show that interlayer edges that involve peripheral nodes can exert more influence than interlayer edges that involve only core nodes. Finally, we consider empirical multilayer networks from biological and social systems. Our work illustrates how heterogeneity across the layers of a multilayer network influences dynamics on the whole network.

具有异构层的多层网络的Ising动力学。
多层网络为研究具有多种交互类型、多个动态过程和/或多个子系统的复杂系统提供了一个框架。在研究多层网络的动态过程时,重要的是要考虑层结构和层间的非均质性如何影响整体动力学。作为一个具体的例子,我们研究了多层网络上的Ising动力学,并研究了网络结构如何影响其定性特征。我们主要关注多路网络,这是一种多层网络,其中层间边缘仅发生在同一实体在不同层上的表现之间,尽管我们也考虑了一个具有更一般多层结构的经验例子。我们使用数值模拟和平均场近似来检查伊辛动力学的稳态行为作为温度(这是一个关键的模型参数)的函数,用于各种双层多层网络的模型和经验数据。我们研究了稳态行为和两层反对准的亚稳态行为,并探讨了层间耦合强度和结构非均质性的影响。在具有核心-外围结构的合成多层网络中,我们表明涉及外围节点的层间边缘比仅涉及核心节点的层间边缘可以发挥更大的影响。最后,我们考虑了来自生物和社会系统的经验多层网络。我们的工作说明了多层网络各层间的异质性如何影响整个网络的动态。
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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