Signal propagation in complex networks

IF 23.9 1区 物理与天体物理 Q1 PHYSICS, MULTIDISCIPLINARY
Peng Ji , Jiachen Ye , Yu Mu , Wei Lin , Yang Tian , Chittaranjan Hens , Matjaž Perc , Yang Tang , Jie Sun , Jürgen Kurths
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引用次数: 32

Abstract

Signal propagation in complex networks drives epidemics, is responsible for information going viral, promotes trust and facilitates moral behavior in social groups, enables the development of misinformation detection algorithms, and it is the main pillar supporting the fascinating cognitive abilities of the brain, to name just some examples. The geometry of signal propagation is determined as much by the network topology as it is by the diverse forms of nonlinear interactions that may take place between the nodes. Advances are therefore often system dependent and have limited translational potential across domains. Given over two decades worth of research on the subject, the time is thus certainly ripe, indeed the need is urgent, for a comprehensive review of signal propagation in complex networks. We here first survey different models that determine the nature of interactions between the nodes, including epidemic models, Kuramoto models, diffusion models, cascading failure models, and models describing neuronal dynamics. Secondly, we cover different types of complex networks and their topologies, including temporal networks, multilayer networks, and neural networks. Next, we cover network time series analysis techniques that make use of signal propagation, including network correlation analysis, information transfer and nonlinear correlation tools, network reconstruction, source localization and link prediction, as well as approaches based on artificial intelligence. Lastly, we review applications in epidemiology, social dynamics, neuroscience, engineering, and robotics. Taken together, we thus provide the reader with an up-to-date review of the complexities associated with the network’s role in propagating signals in the hope of better harnessing this to devise innovative applications across engineering, the social and natural sciences as well as to inspire future research.

复杂网络中的信号传播
信号在复杂网络中的传播会引发流行病,导致信息像病毒一样传播,促进社会群体的信任和道德行为,促进错误信息检测算法的发展,它是支持大脑迷人认知能力的主要支柱,仅举几个例子。信号传播的几何形状既取决于网络拓扑结构,也取决于节点之间可能发生的各种形式的非线性相互作用。因此,进步往往依赖于系统,跨领域的转化潜力有限。考虑到这一课题的研究已经有二十多年的价值,对复杂网络中的信号传播进行全面审查的时机当然已经成熟,实际上迫切需要。在这里,我们首先调查了确定节点之间相互作用性质的不同模型,包括流行病模型、Kuramoto模型、扩散模型、级联失效模型和描述神经元动力学的模型。其次,我们涵盖了不同类型的复杂网络及其拓扑,包括时间网络,多层网络和神经网络。接下来,我们将介绍利用信号传播的网络时间序列分析技术,包括网络相关分析、信息传递和非线性相关工具、网络重建、源定位和链路预测,以及基于人工智能的方法。最后,我们回顾了在流行病学、社会动力学、神经科学、工程学和机器人技术方面的应用。综上所述,我们为读者提供了与信号传播中网络角色相关的复杂性的最新综述,希望能更好地利用这一点,设计出跨工程、社会和自然科学的创新应用,并激发未来的研究。
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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来源期刊
Physics Reports
Physics Reports 物理-物理:综合
CiteScore
56.10
自引率
0.70%
发文量
102
审稿时长
9.1 weeks
期刊介绍: Physics Reports keeps the active physicist up-to-date on developments in a wide range of topics by publishing timely reviews which are more extensive than just literature surveys but normally less than a full monograph. Each report deals with one specific subject and is generally published in a separate volume. These reviews are specialist in nature but contain enough introductory material to make the main points intelligible to a non-specialist. The reader will not only be able to distinguish important developments and trends in physics but will also find a sufficient number of references to the original literature.
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