A self-organizing community detection algorithm for complex networks

Dongming Chen, Zhaoliang Song, Cenyi Luo, Xinyu Huang
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引用次数: 0

Abstract

Complex network is a kind of system structure, which widely exists in human society and nature. It can be used to capture and describe the evolution law, evolution mechanism, and dynamic behaviors. We study the model of entity growth in complex networks, achieve the single node growth model, block growth model and degree of communication difficulty based growth model, then carry out the theoretical analysis and experimental simulation, it is concluded that the entity growth model holds the characteristics of high robustness, high clustering coefficient and low average path. According to the growth model, this paper analyzes the basic idea and implementation process of the self-organizing community discovery algorithm based on information entropy, experimental results show that it is structurally reasonable and has important significance in practical application.
复杂网络自组织社区检测算法
复杂网络是一种广泛存在于人类社会和自然界的系统结构。它可以用来捕捉和描述演化规律、演化机制和动态行为。研究了复杂网络中的实体成长模型,分别实现了单节点成长模型、块成长模型和基于通信困难度的成长模型,并进行了理论分析和实验仿真,得出实体成长模型具有高鲁棒性、高聚类系数和低平均路径的特点。根据增长模型,分析了基于信息熵的自组织社区发现算法的基本思想和实现过程,实验结果表明,该算法结构合理,具有重要的实际应用意义。
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