R-ELMNet: regularized extreme learning machine network
Principal component analysis network (PCANet), as an unsupervised shallow network, demonstrates noticeable effectiveness on datasets of various volumes. It carries a two-layer convolution with PCA as filter learning method, followed by a block-wise histogram post-processing stage. Following the stru...
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sg-ntu-dr.10356-1609412022-08-08T04:53:38Z R-ELMNet: regularized extreme learning machine network Zhang, Guanghao Li, Yue Cui, Dongshun Mao, Shangbo Huang, Guang-Bin School of Electrical and Electronic Engineering Interdisciplinary Graduate School (IGS) Energy Research Institute @ NTU (ERI@N) Engineering::Electrical and electronic engineering Shallow Network PCANet Principal component analysis network (PCANet), as an unsupervised shallow network, demonstrates noticeable effectiveness on datasets of various volumes. It carries a two-layer convolution with PCA as filter learning method, followed by a block-wise histogram post-processing stage. Following the structure of PCANet, extreme learning machine auto-encoder (ELM-AE) variants are employed to replace the PCA's role, which come from extreme learning machine network (ELMNet) and hierarchical ELMNet. ELMNet emphasizes the importance of orthogonal projection while overlooking non-linearity. The latter introduces complex pre-processing to overcome drawback of non-linear ELM-AE. In this paper, we analyze intrinsic characteristics of ELM-AE variants and accordingly propose a regularized ELM-AE, which combines non-linearity learning capability and approximately orthogonal projection. Experiments on image classification show the effectiveness compared to supervised convolutional neural networks and related shallow networks on unsupervised feature learning. 2022-08-08T04:53:37Z 2022-08-08T04:53:37Z 2020 Journal Article Zhang, G., Li, Y., Cui, D., Mao, S. & Huang, G. (2020). R-ELMNet: regularized extreme learning machine network. Neural Networks, 130, 49-59. https://dx.doi.org/10.1016/j.neunet.2020.06.009 0893-6080 https://hdl.handle.net/10356/160941 10.1016/j.neunet.2020.06.009 32623112 2-s2.0-85087281811 130 49 59 en Neural Networks © 2020 Elsevier Ltd. All rights reserved. |
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Engineering::Electrical and electronic engineering Shallow Network PCANet Zhang, Guanghao Li, Yue Cui, Dongshun Mao, Shangbo Huang, Guang-Bin R-ELMNet: regularized extreme learning machine network |
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Principal component analysis network (PCANet), as an unsupervised shallow network, demonstrates noticeable effectiveness on datasets of various volumes. It carries a two-layer convolution with PCA as filter learning method, followed by a block-wise histogram post-processing stage. Following the structure of PCANet, extreme learning machine auto-encoder (ELM-AE) variants are employed to replace the PCA's role, which come from extreme learning machine network (ELMNet) and hierarchical ELMNet. ELMNet emphasizes the importance of orthogonal projection while overlooking non-linearity. The latter introduces complex pre-processing to overcome drawback of non-linear ELM-AE. In this paper, we analyze intrinsic characteristics of ELM-AE variants and accordingly propose a regularized ELM-AE, which combines non-linearity learning capability and approximately orthogonal projection. Experiments on image classification show the effectiveness compared to supervised convolutional neural networks and related shallow networks on unsupervised feature learning. |
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School of Electrical and Electronic Engineering |
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School of Electrical and Electronic Engineering Zhang, Guanghao Li, Yue Cui, Dongshun Mao, Shangbo Huang, Guang-Bin |
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Article |
author |
Zhang, Guanghao Li, Yue Cui, Dongshun Mao, Shangbo Huang, Guang-Bin |
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Zhang, Guanghao |
title |
R-ELMNet: regularized extreme learning machine network |
title_short |
R-ELMNet: regularized extreme learning machine network |
title_full |
R-ELMNet: regularized extreme learning machine network |
title_fullStr |
R-ELMNet: regularized extreme learning machine network |
title_full_unstemmed |
R-ELMNet: regularized extreme learning machine network |
title_sort |
r-elmnet: regularized extreme learning machine network |
publishDate |
2022 |
url |
https://hdl.handle.net/10356/160941 |
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1743119466158358528 |