网络系统中的复杂结构和集体动力学:自适应和自组织的基础

Ingo Scholtes, M. Esch
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引用次数: 1

摘要

学术界和工业界对生物、社会和技术系统中发生的复杂网络和集体动态的研究产生了巨大的兴趣。许多关于自然和人为系统中复杂动态网络自组织形成机制的结果都是基于统计物理学的观点得出的。在本教程中,我们对这一观点提供了一个基本的介绍,这将有助于与会者从网络科学和复杂系统领域中关于自组织和自适应现象的大量文献中受益。我们涵盖了静态复杂网络研究的基本模型和抽象,以及动态过程,例如,信息扩散,随机漫步,同步或级联故障的传播。我们进一步介绍了动态(社会)网络研究的最新进展,并展示了如何将所得方法实际应用于自组织和自适应分布式系统和协议的工程中。
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Complex Structures and Collective Dynamics in Networked Systems: Foundations for Self-Adaptation and Self-Organization
The study of complex networks and collective dynamics occurring in biological, social and technical systems has experienced a massive surge of interest both from academia and industry. Many of the results on the mechanisms underlying the self-organized formation of complex dynamic networks in natural and man-made systems have been derived based on a statistical physics perspective. In this tutorial, we provide a basic introduction to this perspective which will help attendees to benefit from the vast literature on self-organization and self-adaptation phenomena available in the fields of network science and complex systems. We cover basic models and abstractions for the study of static complex networks as well as dynamical processes like, e.g., information diffusion, random walks, synchronization or the propagation of cascading failures. We further introduce recent advances in the study of dynamic (social) networks and demonstrate how the resulting methods can be practically applied in the engineering of self-organizing and self-adaptive distributed systems and protocols.
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