Author:
Lv Lintao,Wu Jialin,Lv Hui
Abstract
Abstract
Community structure is an important feature of complex networks. These community structures have the fractal characteristics, that is, there is a self similarity of statistical sense between the complex networks and their local. There have been more and more recent researches on communities’ discovery in complex network. However, most existing approaches require the complete information of entire network, which is impractical for some networks, e.g. the dynamical network and the network that is too large to get the whole information. Therefore, the study of community discovery in complex networks has rather important theoretical and practical value. Through the analysis and study of the complex network evolution models with renormalization and the community change of the complex network evolution, using the tool of adjusting scales as the renormalization process, a multi-scale network community detection algorithm based on fractal feature evolution was proposed. The purpose is to solve community discovery problems in dynamic complex networks, and the effectiveness of the proposed method is verified by real data sets. By comparing result of this paper with the previous methods on some real world networks, and experimental results verify the feasibility and accuracy.
Subject
General Physics and Astronomy
Reference8 articles.
1. Community Detection Algorithm with Local-First Approach in Social Networks [J];Li;Journal of Frontiers of Computer Science & Technology,2018
2. Incremental Parallel Community Detection Algorithm Considering the Stability of Community Structure [J];Guo;Journal of Chinese Computer Systems,2018
3. A. neighborhood proximity based algorithm for overlapping community structure detection in weighted networks [J];Kumar;Frontiers of Computer Science,2019
4. Technological progress and trends of big data [J];Cheng;Science & Technology Review,2016
5. Community Extraction in Multilayer Networks with Heterogeneous Community Structure. [J];Wilson James;Journal of machine learning research: JMLR,2017
Cited by
3 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献