Community detection in complex networks using deep auto-encoded extreme learning machine

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Abstract

Community detection has long been a fascinating topic in complex networks since the community structure usually unveils valuable information of interest. The prevalence and evolution of deep learning and neural networks have been pushing forward the advancement in various research fields and also provide us numerous useful and off the shelf techniques. In this paper, we put the cascaded stacked autoencoders and the unsupervised extreme learning machine (ELM) together in a two-level embedding process and propose a novel community detection algorithm. Extensive comparison experiments in circumstances of both synthetic and real-world networks manifest the advantages of the proposed algorithm. On one hand, it outperforms the k-means clustering in terms of the accuracy and stability thus benefiting from the determinate dimensions of the ELM block and the integration of sparsity restrictions. On the other hand, it endures smaller complexity than the spectral clustering method on account of the shrinkage in time spent on the eigenvalue decomposition procedure.

Original languageEnglish
Article number1850180
JournalModern Physics Letters B
Volume32
Issue number16
DOIs
Publication statusPublished - 10 Jun 2018

Keywords

  • Community detection
  • autoencoder
  • complex networks
  • deep learning
  • extreme learning machine

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Wang, F., Zhang, B., Chai, S., & Xia, Y. (2018). Community detection in complex networks using deep auto-encoded extreme learning machine. Modern Physics Letters B, 32(16), Article 1850180. https://doi.org/10.1142/S0217984918501804