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Modelling and simulation of large-scale complex networks

机译:大规模复杂网络的建模与仿真

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摘要

Real-world large-scale complex networks such as the Internet, social networks and biological networks have increasingly attracted the interest of researchers from many areas. Accurate modelling of the statistical regularities of these large-scale networks is critical to understand their global evolving structures and local dynamical patterns. Traditionally, the Erdos and Renyi random graph model has helped the investigation of various homogeneous networks. During the past decade, a special computational methodology has emerged to study complex networks, the outcome of which is identified by two models: the Watts and Strogatz small-world model and the Barabasi-Albert scale-free model. At the core of the complex network modelling process is the extraction of characteristics of real-world networks. I have developed computer simulation algorithms for study of the properties of current theoretical models as well as for the measurement of two real-world complex networks, which lead to the isolation of three complex network modelling essentials. The main contribution of the thesis is the introduction and study of a new General Two-Stage growth model (GTS Model), which aims to describe and analyze many common-featured real-world complex networks. The tools we use to create the model and later perform many measurements on it consist of computer simulations, numerical analysis and mathematical derivations. In particular, two major cases of this GTS model have been studied. One is named the U-P model, which employs a new functional form of the network growth rule: a linear combination of preferential attachment and uniform attachment. The degree distribution of the model is first studied by computer simulation, while the exact solution is also obtained analytically. Two other important properties of complex networks: the characteristic path length and the clustering coefficient are also extensively investigated, obtaining either analytically derived solutions or numerical results by computer simulations. Furthermore, I demonstrate that the hub-hub interaction behaves in effect as the link between a network's topology and resilience property. The other is called the Hybrid model, which incorporates two stages of growth and studies the transition behaviour between the Erdos and Renyi random graph model and the Barabasi-Albert scale-free model. The Hybrid model is measured by extensive numerical simulations focusing on its degree distribution, characteristic path length and clustering coefficient. Although either of the two cases serves as a new approach to modelling real-world large-scale complex networks, perhaps more importantly, the general two-stage model provides a new theoretical framework for complex network modelling, which can be extended in many ways besides the two studied in this thesis.
机译:互联网,社交网络和生物网络等现实世界中的大型复杂网络越来越吸引了来自许多领域的研究人员的兴趣。这些大型网络的统计规律的准确建模对于了解其全球演化结构和局部动力学模式至关重要。传统上,Erdos和Renyi随机图模型有助于研究各种同构网络。在过去的十年中,出现了一种特殊的计算方法来研究复杂的网络,其结果由两个模型确定:Watts和Strogatz小世界模型以及Barabasi-Albert无标度模型。复杂网络建模过程的核心是提取实际网络的特征。我已经开发了计算机仿真算法,用于研究当前理论模型的特性以及测量两个现实世界中的复杂网络,从而隔离了三个复杂的网络建模要素。本文的主要贡献是介绍和研究了一种新的通用两阶段增长模型(GTS Model),该模型旨在描述和分析许多常见的现实世界复杂网络。我们用于创建模型并随后对其执行许多测量的工具包括计算机仿真,数值分析和数学推导。特别是,已经研究了该GTS模型的两个主要情况。一种被称为U-P模型,它采用了网络增长规则的一种新功能形式:优先连接和统一连接的线性组合。首先通过计算机仿真研究模型的度分布,同时还通过解析获得精确的解。复杂网络的其他两个重要属性:特征路径长度和聚类系数也得到了广泛研究,可以通过计算机仿真获得解析得出的解或数值结果。此外,我证明了集线器与集线器的交互作用实际上是网络拓扑和弹性属性之间的链接。另一个称为混合模型,它包含两个增长阶段,研究鄂尔多斯和仁义随机图模型与Barabasi-Albert无标度模型之间的过渡行为。混合模型是通过广泛的数值模拟来测量的,重点是其程度分布,特征路径长度和聚类系数。尽管这两种情况都可以用作对现实世界中的大型复杂网络进行建模的新方法,但也许更重要的是,常规的两阶段模型为复杂的网络建模提供了新的理论框架,除此以外,还可以通过多种方式进行扩展本文研究了两者。

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    Luo H;

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