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Sparse Bayesian Learning for Extreme Learning Machine Auto-encoder

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Proceedings of ELM 2018 (ELM 2018)

Part of the book series: Proceedings in Adaptation, Learning and Optimization ((PALO,volume 11))

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Abstract

Extreme Learning Machine (ELM) is a popular method in machine learning with extremely few parameters, fast learning speed and model efficiency. While a significant drawback is that ELM is restricted by its single-layer structure and prized analytic solution. If simply stacking more layers, analytic solution of ELM will be intractable. Then gradient-based optimization method is preferred and that results into normal neural networks. Recently a multi-layer ELM (ML-ELM) is proposed to learn compact feature with a series of ELM auto-encoders, which attempts to extend ELM to a deeper network without sacrificing elegant solution. Compared with ML-ELM and following hierarchical ELM, we introduce a sparse Bayesian learning method to imply a stronger sparse regularization and prune network structure. Experiments on classification verify the efficiency of our proposed new multi-layer ELM for unsupervised feature learning.

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Correspondence to Guanghao Zhang , Dongshun Cui , Shangbo Mao or Guang-Bin Huang .

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Zhang, G., Cui, D., Mao, S., Huang, GB. (2020). Sparse Bayesian Learning for Extreme Learning Machine Auto-encoder. In: Cao, J., Vong, C., Miche, Y., Lendasse, A. (eds) Proceedings of ELM 2018. ELM 2018. Proceedings in Adaptation, Learning and Optimization, vol 11. Springer, Cham. https://doi.org/10.1007/978-3-030-23307-5_34

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