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Main Authors: Tan, Zhiquan, Zheng, Kaipeng, Huang, Weiran
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2310.17455
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author Tan, Zhiquan
Zheng, Kaipeng
Huang, Weiran
author_facet Tan, Zhiquan
Zheng, Kaipeng
Huang, Weiran
contents Semi-supervised learning has made remarkable strides by effectively utilizing a limited amount of labeled data while capitalizing on the abundant information present in unlabeled data. However, current algorithms often prioritize aligning image predictions with specific classes generated through self-training techniques, thereby neglecting the inherent relationships that exist within these classes. In this paper, we present a new approach called OTMatch, which leverages semantic relationships among classes by employing an optimal transport loss function to match distributions. We conduct experiments on many standard vision and language datasets. The empirical results show improvements in our method above baseline, this demonstrates the effectiveness and superiority of our approach in harnessing semantic relationships to enhance learning performance in a semi-supervised setting.
format Preprint
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institution arXiv
publishDate 2023
record_format arxiv
spellingShingle OTMatch: Improving Semi-Supervised Learning with Optimal Transport
Tan, Zhiquan
Zheng, Kaipeng
Huang, Weiran
Computer Vision and Pattern Recognition
Semi-supervised learning has made remarkable strides by effectively utilizing a limited amount of labeled data while capitalizing on the abundant information present in unlabeled data. However, current algorithms often prioritize aligning image predictions with specific classes generated through self-training techniques, thereby neglecting the inherent relationships that exist within these classes. In this paper, we present a new approach called OTMatch, which leverages semantic relationships among classes by employing an optimal transport loss function to match distributions. We conduct experiments on many standard vision and language datasets. The empirical results show improvements in our method above baseline, this demonstrates the effectiveness and superiority of our approach in harnessing semantic relationships to enhance learning performance in a semi-supervised setting.
title OTMatch: Improving Semi-Supervised Learning with Optimal Transport
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2310.17455