4.6 Article

Generalized extreme learning machine autoencoder and a new deep neural network

Journal

NEUROCOMPUTING
Volume 230, Issue -, Pages 374-381

Publisher

ELSEVIER
DOI: 10.1016/j.neucom.2016.12.027

Keywords

Extreme learning machine; Generalized extreme learning machine autoencoder; Manifold regularization; Deep neural network; Multilayer generalized extreme learning machine autoencoder

Funding

  1. National Basic Research Program of China (973Program) [2013CB329404]
  2. National Natural Science Foundation of China [61572393, 11501049, 11671317, 11131006]

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Extreme learning machine (ELM) is an efficient learning algorithm of training single layer feed-forward neural networks (SLFNs). With the development of unsupervised learning in recent years, integrating ELM with autoencoder has become a new perspective for extracting feature using unlabeled data. In this paper, we propose a new variant of extreme learning machine autoencoder (ELM-AE) called generalized extreme learning machine autoencoder (GELM-AE) which adds the manifold regularization to the objective of ELM-AE. Some experiments carried out on real-world data sets show that GELM-AE outperforms some state-of-the-art unsupervised learning algorithms, including k-means, laplacian embedding (LE), spectral clustering (SC) and ELM-AE. Furthermore, we also propose a new deep neural network called multilayer generalized extreme learning machine autoencoder (ML-GELM) by stacking several GELM-AE to detect more abstract representations. The experiments results show that ML-GELM outperforms ELM and many other deep models, such as multilayer ELM autoencoder (ML-ELM), deep belief network (DBN) and stacked autoencoder (SAE). Due to the utilization of ELM, ML-GELM is also faster than DBN and SAE.

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