复杂网络和大脑的随机图模型

Q4 Engineering
R. Hofstad
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引用次数: 2

摘要

在本章中,我们讨论复杂网络作为一个主要的例子,从复杂性理论的思想可以成功地应用。复杂网络在其连通性中表现出紧急行为,并且它们具有导致非线性的复杂反馈机制,特别是在网络结构高度异构的环境中。我们从现实世界的网络中获取关于这些网络属性的动机。我们为现实世界的网络建立了随机图模型,并研究了这些模型的性质,如它们的度结构、连通性和小世界性质,以及随机过程在它们上面的行为。我们重点研究了文献中最受关注的几个模型,即Erdos-Renyi随机图、非齐次随机图、配置模型和优先依恋模型。我们还讨论了它们的一些扩展,这些扩展有可能为现实世界的网络产生更现实的模型。我们通过推测随机图在大脑中的应用来结束本章,大脑可以说是现存最复杂的网络。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Random graphs models for complex networks, and the brain
In this chapter, we discuss complex networks as a prime example where the ideas from complexity theory can be successfully applied. Complex networks show emergent behavior in their connectivity, and they have intricate feedback mechanisms leading to non-linearities, particularly in settings where the network structure is highly heterogeneous. We draw motivation from real-world networks about the properties of such networks. We formulate random graph models for real-world networks and investigate the properties of these models, such as their degree structure, their connectivity and their small-world properties, as well as the behavior of stochastic processes on them. We focus on some models that have received the most attention in the literature, namely, the Erdos-Renyi random graph, inhomogeneous random graphs, the configuration model and preferential attachment models. We also discuss some of their extensions that have the potential to yield more realistic models for real-world networks. We close this chapter by speculating on applications of random graphs to the brain, which is arguably the most complex network that exists.
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来源期刊
复杂系统与复杂性科学
复杂系统与复杂性科学 Engineering-Control and Systems Engineering
CiteScore
0.80
自引率
0.00%
发文量
891
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