Investigation of activation functions in deep belief network

© 2017 IEEE. Deep Belief Network (DBN) is made up of stacked Restricted Boltzmann Machine layers associated with global weight fine-tuning for pattern recognition. However, DBN suffers from vanishing gradient problem due to the saturation characteristic of activation function. Therefore, the selecti...

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Main Authors: Lau, M., Lim, Hann
Format: Conference Paper
Published: 2017
Online Access:http://hdl.handle.net/20.500.11937/54534
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author Lau, M.
Lim, Hann
author_facet Lau, M.
Lim, Hann
author_sort Lau, M.
building Curtin Institutional Repository
collection Online Access
description © 2017 IEEE. Deep Belief Network (DBN) is made up of stacked Restricted Boltzmann Machine layers associated with global weight fine-tuning for pattern recognition. However, DBN suffers from vanishing gradient problem due to the saturation characteristic of activation function. Therefore, the selection of activation function in DBN is critical to reduce the network complexity and improve performance of pattern recognition. Unsaturated activation functions such as rectified linear unit and leaky rectified linear unit were recently proposed to avoid the effect of vanishing gradient for a deep learning neural network. In this paper, we investigated the network performance with both saturated and unsaturated activation functions. Besides that, the randomization of training samples would significantly improve the performance of DBN. The experimental results showed that hyperbolic tangent activation function achieved the lowest error rate which is 1.99% on MNIST handwritten digit dataset.
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spelling curtin-20.500.11937-545342017-09-13T15:50:07Z Investigation of activation functions in deep belief network Lau, M. Lim, Hann © 2017 IEEE. Deep Belief Network (DBN) is made up of stacked Restricted Boltzmann Machine layers associated with global weight fine-tuning for pattern recognition. However, DBN suffers from vanishing gradient problem due to the saturation characteristic of activation function. Therefore, the selection of activation function in DBN is critical to reduce the network complexity and improve performance of pattern recognition. Unsaturated activation functions such as rectified linear unit and leaky rectified linear unit were recently proposed to avoid the effect of vanishing gradient for a deep learning neural network. In this paper, we investigated the network performance with both saturated and unsaturated activation functions. Besides that, the randomization of training samples would significantly improve the performance of DBN. The experimental results showed that hyperbolic tangent activation function achieved the lowest error rate which is 1.99% on MNIST handwritten digit dataset. 2017 Conference Paper http://hdl.handle.net/20.500.11937/54534 10.1109/ICCRE.2017.7935070 restricted
spellingShingle Lau, M.
Lim, Hann
Investigation of activation functions in deep belief network
title Investigation of activation functions in deep belief network
title_full Investigation of activation functions in deep belief network
title_fullStr Investigation of activation functions in deep belief network
title_full_unstemmed Investigation of activation functions in deep belief network
title_short Investigation of activation functions in deep belief network
title_sort investigation of activation functions in deep belief network
url http://hdl.handle.net/20.500.11937/54534