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Accurate detection of hierarchical communities in complex networks based on nonlinear dynamical evolution

机译:基于非线性动力学演变的复杂网络中的分层社区精确检测

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摘要

One of the most challenging problems in network science is to accurately detect communities at distinct hierarchical scales. Most existing methods are based on structural analysis and manipulation, which are NP-hard. We articulate an alternative, dynamical evolution-based approach to the problem. The basic principle is to computationally implement a nonlinear dynamical process on all nodes in the network with a general coupling scheme, creating a networked dynamical system. Under a proper system setting and with an adjustable control parameter, the community structure of the network would “come out” or emerge naturally from the dynamical evolution of the system. As the control parameter is systematically varied, the community hierarchies at different scales can be revealed. As a concrete example of this general principle, we exploit clustered synchronization as a dynamical mechanism through which the hierarchical community structure can be uncovered. In particular, for quite arbitrary choices of the nonlinear nodal dynamics and coupling scheme, decreasing the coupling parameter from the global synchronization regime, in which the dynamical states of all nodes are perfectly synchronized, can lead to a weaker type of synchronization organized as clusters. We demonstrate the existence of optimal choices of the coupling parameter for which the synchronization clusters encode accurate information about the hierarchical community structure of the network. We test and validate our method using a standard class of benchmark modular networks with two distinct hierarchies of communities and a number of empirical networks arising from the real world. Our method is computationally extremely efficient, eliminating completely the NP-hard difficulty associated with previous methods. The basic principle of exploiting dynamical evolution to uncover hidden community organizations at different scales represents a “game-change” type of approach to addressing the problem of communit
机译:网络科学中最具挑战性的问题之一是准确地检测不同分层尺度的社区。大多数现有方法都是基于结构分析和操纵,这是NP-HARD。我们阐述了一种替代的动态演化的问题方法。基本原理是通过通用耦合方案计算在网络中的所有节点上的非线性动力学过程,创建网络动态系统。在一个适当的系统设置和可调控制参数下,网络的社区结构将“出来”或自然地从系统的动态演变自然出现。由于控制参数系统地改变,可以揭示不同尺度的社区层次结构。作为这一通用原理的具体示例,我们将聚类同步作为一种动态机制,通过该机制可以揭示分层社区结构。特别地,对于非线性节点动力学和耦合方案的相当任意选择,从全局同步制度降低耦合参数,其中所有节点的动态状态完全同步,可以导致较弱的同步类型组织为簇。我们展示了同步群集对网络的分层社区结构的准确信息的耦合参数的最佳选择存在。我们使用标准类的基准模块化网络测试和验证我们的方法,具有两个不同的社区层次结构以及来自现实世界产生的许多实证网络。我们的方法是计算地非常有效,完全消除与先前方法相关的NP难度。利用动态演进的基本原则,以揭示不同尺度的隐藏社区组织代表了解决Communit问题的“游戏变更”类型的方法

著录项

  • 来源
    《Chaos》 |2018年第1期|共14页
  • 作者单位

    Web Sciences Center School of Computer Science and Engineering University of Electronic Science and Technology of China Chengdu 611731 China;

    Web Sciences Center School of Computer Science and Engineering University of Electronic Science and Technology of China Chengdu 611731 China;

    Institute of Fundamental and Frontier Sciences and Big Data Research Center University of Electronic Science and Technology of China Chengdu 611731 China;

    School of Electrical Computer and Energy Engineering Arizona State University Tempe Arizona 85287 USA;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 自然科学总论;
  • 关键词

    Accurate; detection; hierarchical;

    机译:准确;检测;等级;

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