Supervised representation learning with double encoding-layer autoencoder for transfer learning
Transfer learning has gained a lot of attention and interest in the past decade. One crucial research issue in transfer learning is how to find a good representation for instances of different domains such that the divergence between domains can be reduced with the new representation. Recently, deep...
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sg-ntu-dr.10356-1434552020-09-02T06:59:20Z Supervised representation learning with double encoding-layer autoencoder for transfer learning Zhuang, Fuzhen Cheng, Xiaohu Luo, Ping Pan, Sinno Jialin He, Qing School of Computer Science and Engineering Engineering::Computer science and engineering Encoding (Symbols) Learning Systems Transfer learning has gained a lot of attention and interest in the past decade. One crucial research issue in transfer learning is how to find a good representation for instances of different domains such that the divergence between domains can be reduced with the new representation. Recently, deep learning has been proposed to learn more robust or higher-level features for transfer learning. In this article, we adapt the autoencoder technique to transfer learning and propose a supervised representation learning method based on double encoding-layer autoencoder. The proposed framework consists of two encoding layers: one for embedding and the other one for label encoding. In the embedding layer, the distribution distance of the embedded instances between the source and target domains is minimized in terms of KL-Divergence. In the label encoding layer, label information of the source domain is encoded using a softmax regression model. Moreover, to empirically explore why the proposed framework can work well for transfer learning, we propose a new effective measure based on autoencoder to compute the distribution distance between different domains. Experimental results show that the proposed new measure can better reflect the degree of transfer difficulty and has stronger correlation with the performance from supervised learning algorithms (e.g., Logistic Regression), compared with previous ones, such as KL-Divergence and Maximum Mean Discrepancy. Therefore, in our model, we have incorporated two distribution distance measures to minimize the difference between source and target domains in the embedding representations. Extensive experiments conducted on three real-world image datasets and one text data demonstrate the effectiveness of our proposed method compared with several state-of-the-art baseline methods. 2020-09-02T06:59:20Z 2020-09-02T06:59:20Z 2017 Journal Article Zhuang, F., Cheng, X., Luo, P., Pan, S. J., & He, Q. (2017). Supervised representation learning with double encoding-layer autoencoder for transfer learning. ACM Transactions on Intelligent Systems and Technology, 9(2), 1-17. doi:10.1145/3108257 2157-6904 https://hdl.handle.net/10356/143455 10.1145/3108257 2-s2.0-85032616283 2 9 1 17 en ACM Transactions on Intelligent Systems and Technology © 2017 Association for Computing Machinery (ACM). All rights reserved. |
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Engineering::Computer science and engineering Encoding (Symbols) Learning Systems Zhuang, Fuzhen Cheng, Xiaohu Luo, Ping Pan, Sinno Jialin He, Qing Supervised representation learning with double encoding-layer autoencoder for transfer learning |
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Transfer learning has gained a lot of attention and interest in the past decade. One crucial research issue in transfer learning is how to find a good representation for instances of different domains such that the divergence between domains can be reduced with the new representation. Recently, deep learning has been proposed to learn more robust or higher-level features for transfer learning. In this article, we adapt the autoencoder technique to transfer learning and propose a supervised representation learning method based on double encoding-layer autoencoder. The proposed framework consists of two encoding layers: one for embedding and the other one for label encoding. In the embedding layer, the distribution distance of the embedded instances between the source and target domains is minimized in terms of KL-Divergence. In the label encoding layer, label information of the source domain is encoded using a softmax regression model. Moreover, to empirically explore why the proposed framework can work well for transfer learning, we propose a new effective measure based on autoencoder to compute the distribution distance between different domains. Experimental results show that the proposed new measure can better reflect the degree of transfer difficulty and has stronger correlation with the performance from supervised learning algorithms (e.g., Logistic Regression), compared with previous ones, such as KL-Divergence and Maximum Mean Discrepancy. Therefore, in our model, we have incorporated two distribution distance measures to minimize the difference between source and target domains in the embedding representations. Extensive experiments conducted on three real-world image datasets and one text data demonstrate the effectiveness of our proposed method compared with several state-of-the-art baseline methods. |
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School of Computer Science and Engineering |
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School of Computer Science and Engineering Zhuang, Fuzhen Cheng, Xiaohu Luo, Ping Pan, Sinno Jialin He, Qing |
format |
Article |
author |
Zhuang, Fuzhen Cheng, Xiaohu Luo, Ping Pan, Sinno Jialin He, Qing |
author_sort |
Zhuang, Fuzhen |
title |
Supervised representation learning with double encoding-layer autoencoder for transfer learning |
title_short |
Supervised representation learning with double encoding-layer autoencoder for transfer learning |
title_full |
Supervised representation learning with double encoding-layer autoencoder for transfer learning |
title_fullStr |
Supervised representation learning with double encoding-layer autoencoder for transfer learning |
title_full_unstemmed |
Supervised representation learning with double encoding-layer autoencoder for transfer learning |
title_sort |
supervised representation learning with double encoding-layer autoencoder for transfer learning |
publishDate |
2020 |
url |
https://hdl.handle.net/10356/143455 |
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1681058949404557312 |