Tangent-normal adversarial regularization for semi-supervised learning
Tangent-normal adversarial regularization for semi-supervised learning
Compared with standard supervised learning, the key difficulty in semi-supervised learning is how to make full use of the unlabeled data. A recently proposed method, virtual adversarial training (VAT), smartly performs adversarial training without label information to impose a local smoothness on the classifier, which is especially beneficial to semi-supervised learning. In this work, we propose tangent-normal adversarial regularization (TNAR) as an extension of VAT by taking the data manifold into consideration. The proposed TNAR is composed by two complementary parts, the tangent adversarial regularization (TAR) and the normal adversarial regularization (NAR). In TAR, VAT is applied along the tangent space of the data manifold, aiming to enforce local invariance of the classifier on the manifold, while in NAR, VAT is performed on the normal space orthogonal to the tangent space, intending to impose robustness on the classifier against the noise causing the observed data deviating from the underlying data manifold. Demonstrated by experiments on both artificial and practical datasets, our proposed TAR and NAR complement with each other, and jointly outperforms other state-of-the-art methods for semi-supervised learning.
Deep Learning, Representation Learning
10668-10676
Yu, Bing
f1b8acda-26a3-4ff6-b21c-004850cab45c
Wu, Jingfeng
8b1664ba-36ea-4dd6-b3dd-450afb4b2f03
Ma, Jinwen
b0c0c37e-7c2b-4c86-87fb-ffbcb20b8dcd
Zhu, Zhanxing
e55e7385-8ba2-4a85-8bae-e00defb7d7f0
Yu, Bing
f1b8acda-26a3-4ff6-b21c-004850cab45c
Wu, Jingfeng
8b1664ba-36ea-4dd6-b3dd-450afb4b2f03
Ma, Jinwen
b0c0c37e-7c2b-4c86-87fb-ffbcb20b8dcd
Zhu, Zhanxing
e55e7385-8ba2-4a85-8bae-e00defb7d7f0
Yu, Bing, Wu, Jingfeng, Ma, Jinwen and Zhu, Zhanxing
(2020)
Tangent-normal adversarial regularization for semi-supervised learning.
In 2019 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR).
vol. 2019-June,
IEEE.
.
(doi:10.1109/CVPR.2019.01093).
Record type:
Conference or Workshop Item
(Paper)
Abstract
Compared with standard supervised learning, the key difficulty in semi-supervised learning is how to make full use of the unlabeled data. A recently proposed method, virtual adversarial training (VAT), smartly performs adversarial training without label information to impose a local smoothness on the classifier, which is especially beneficial to semi-supervised learning. In this work, we propose tangent-normal adversarial regularization (TNAR) as an extension of VAT by taking the data manifold into consideration. The proposed TNAR is composed by two complementary parts, the tangent adversarial regularization (TAR) and the normal adversarial regularization (NAR). In TAR, VAT is applied along the tangent space of the data manifold, aiming to enforce local invariance of the classifier on the manifold, while in NAR, VAT is performed on the normal space orthogonal to the tangent space, intending to impose robustness on the classifier against the noise causing the observed data deviating from the underlying data manifold. Demonstrated by experiments on both artificial and practical datasets, our proposed TAR and NAR complement with each other, and jointly outperforms other state-of-the-art methods for semi-supervised learning.
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e-pub ahead of print date: 9 January 2020
Venue - Dates:
32nd IEEE/CVF Conference on Computer Vision and Pattern Recognition, , Long Beach, United States, 2019-06-16 - 2019-06-20
Keywords:
Deep Learning, Representation Learning
Identifiers
Local EPrints ID: 486054
URI: http://eprints.soton.ac.uk/id/eprint/486054
ISSN: 1063-6919
PURE UUID: ffe14faa-ab00-434c-9e64-3d3f116d9185
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Date deposited: 08 Jan 2024 17:34
Last modified: 17 Mar 2024 06:41
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Author:
Bing Yu
Author:
Jingfeng Wu
Author:
Jinwen Ma
Author:
Zhanxing Zhu
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