相互依存
利用
计算机科学
相关性(法律)
数据科学
复杂网络
芯(光纤)
相互依存的网络
复杂系统
网络科学
风险分析(工程)
钥匙(锁)
社会网络分析
管理科学
鉴定(生物学)
动态网络分析
可靠性(半导体)
社交网络(社会语言学)
网络模型
分布式计算
网络分析
期限(时间)
系统工程
作者
Alberto Aleta,Andreia Sofia Teixeira,Guilherme Ferraz de Arruda,Andrea Baronchelli,Alain Barrat,János Kertész,Albert Dı́az-Guilera,Oriol Artime,Michele Starnini,Giovanni Petri,Márton Karsai,Siddharth Patwardhan,Alessandro Vespignani,Yamir Moreno,Santo Fortunato,Yamir Moreno,Santo Fortunato
标识
DOI:10.1093/comnet/cnag007
摘要
Abstract Multilayer network science has emerged as a central framework for analysing interconnected and interdependent complex systems. Its relevance has grown substantially with the increasing availability of rich, heterogeneous data, which makes it possible to uncover and exploit the inherently multilayered organisation of many real-world networks. In this review, we summarise recent developments in the field. On the theoretical and methodological front, we outline core concepts and survey advances in community detection, dynamical processes, temporal networks, higher-order interactions, and machine-learning-based approaches. On the application side, we discuss progress across diverse domains, including interdependent infrastructures, spreading dynamics, computational social science, economic and financial systems, ecological and climate networks, science-of-science studies, network medicine, and network neuroscience. We conclude with a forward-looking perspective, emphasizing the need for standardised datasets and software, deeper integration of temporal and higher-order structures, and a transition toward genuinely predictive models of complex systems.
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