Open AccessProceedings Article
Modularity based community detection with deep learning
Liang Yang,Xiaochun Cao,Dongxiao He,Chuan Wang,Xiao Wang,Weixiong Zhang +5 more
- 09 Jul 2016
- pp 2252-2258
227
TL;DR: This work proposes a novel nonlinear reconstruction method by adopting deep neural networks for representation and extends the method to a semi-supervised community detection algorithm by incorporating pairwise constraints among graph nodes.
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Abstract: Identification of module or community structures is important for characterizing and understanding complex systems. While designed with different objectives, i.e., stochastic models for regeneration and modularity maximization models for discrimination, both these two types of model look for low-rank embedding to best represent and reconstruct network topology. However, the mapping through such embedding is linear, whereas real networks have various nonlinear features, making these models less effective in practice. Inspired by the strong representation power of deep neural networks, we propose a novel nonlinear reconstruction method by adopting deep neural networks for representation. We then extend the method to a semi-supervised community detection algorithm by incorporating pairwise constraints among graph nodes. Extensive experimental results on synthetic and real networks show that the new methods are effective, outperforming most state-of-the-art methods for community detection.
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Citations
Proceedings of the National Academy of Sciences
TL;DR: It is shown that the full set of hydromagnetic equations admit five more integrals, besides the energy integral, if dissipative processes are absent, which made it possible to formulate a variational principle for the force-free magnetic fields.
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Learning Community Embedding with Community Detection and Node Embedding on Graphs
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- 06 Nov 2017
TL;DR: This paper studies an important yet largely under-explored setting of graph embedding, i.e., embedding communities instead of each individual nodes, and proposes a novel community embedding framework that jointly solves the three tasks together.
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A Survey of Community Detection Approaches: From Statistical Modeling to Deep Learning
TL;DR: In this paper, the authors provide a comprehensive review of the existing community detection methods and introduce a new taxonomy that divides the existing methods into two categories, probabilistic graphical model and deep learning.
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A survey of community search over big graphs
Yixiang Fang,Xin Huang,Lu Qin,Ying Zhang,Wenjie Zhang,Reynold Cheng,Xuemin Lin +6 more
- 01 Jan 2020
TL;DR: A comprehensive review of existing community search works can be found in this paper, where the authors analyze and compare the quality of communities under their models, and the performance of different solutions.
Deep Learning for Community Detection: Progress, Challenges and Opportunities
Fanzhen Liu,Shan Xue,Shan Xue,Jia Wu,Chuan Zhou,Wenbin Hu,Cecile Paris,Cecile Paris,Surya Nepal,Surya Nepal,Jian Yang,Philip S. Yu +11 more
- 09 Jul 2020
TL;DR: This article summarizes the contributions of the various frameworks, models, and algorithms in each stream of deep learning in this domain along with the current challenges that remain unsolved and the future research opportunities yet to be explored.
References
Fast unfolding of communities in large networks
Vincent D. Blondel,Jean-Loup Guillaume,Jean-Loup Guillaume,Renaud Lambiotte,Renaud Lambiotte,Etienne Lefebvre +5 more
TL;DR: This work proposes a heuristic method that is shown to outperform all other known community detection methods in terms of computation time and the quality of the communities detected is very good, as measured by the so-called modularity.
Community structure in social and biological networks
Michelle Girvan,Mark Newman +1 more
TL;DR: This article proposes a method for detecting communities, built around the idea of using centrality indices to find community boundaries, and tests it on computer-generated and real-world graphs whose community structure is already known and finds that the method detects this known structure with high sensitivity and reliability.
Modularity and community structure in networks
TL;DR: In this article, the modularity of a network is expressed in terms of the eigenvectors of a characteristic matrix for the network, which is then used for community detection.
Fast unfolding of communities in large networks
Vincent D. Blondel,Jean-Loup Guillaume,Jean-Loup Guillaume,Renaud Lambiotte,Renaud Lambiotte,Etienne Lefebvre +5 more
TL;DR: In this paper, the authors proposed a simple method to extract the community structure of large networks based on modularity optimization, which is shown to outperform all other known community detection methods in terms of computation time.
•Journal Article
Modularity and community structure in networks
TL;DR: It is shown that the modularity of a network can be expressed in terms of the eigenvectors of a characteristic matrix for the network, which is called modularity matrix, and that this expression leads to a spectral algorithm for community detection that returns results of demonstrably higher quality than competing methods in shorter running times.
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