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Main Authors: Guo, Jifeng, Liu, Zhulin, Zhang, Tong, Chen, C. L. Philip
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2404.12398
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author Guo, Jifeng
Liu, Zhulin
Zhang, Tong
Chen, C. L. Philip
author_facet Guo, Jifeng
Liu, Zhulin
Zhang, Tong
Chen, C. L. Philip
contents Semi-supervised learning provides a solution to reduce the dependency of machine learning on labeled data. As one of the efficient semi-supervised techniques, self-training (ST) has received increasing attention. Several advancements have emerged to address challenges associated with noisy pseudo-labels. Previous works on self-training acknowledge the importance of unlabeled data but have not delved into their efficient utilization, nor have they paid attention to the problem of high time consumption caused by iterative learning. This paper proposes Incremental Self-training (IST) for semi-supervised learning to fill these gaps. Unlike ST, which processes all data indiscriminately, IST processes data in batches and priority assigns pseudo-labels to unlabeled samples with high certainty. Then, it processes the data around the decision boundary after the model is stabilized, enhancing classifier performance. Our IST is simple yet effective and fits existing self-training-based semi-supervised learning methods. We verify the proposed IST on five datasets and two types of backbone, effectively improving the recognition accuracy and learning speed. Significantly, it outperforms state-of-the-art competitors on three challenging image classification tasks.
format Preprint
id arxiv_https___arxiv_org_abs_2404_12398
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Incremental Self-training for Semi-supervised Learning
Guo, Jifeng
Liu, Zhulin
Zhang, Tong
Chen, C. L. Philip
Machine Learning
Semi-supervised learning provides a solution to reduce the dependency of machine learning on labeled data. As one of the efficient semi-supervised techniques, self-training (ST) has received increasing attention. Several advancements have emerged to address challenges associated with noisy pseudo-labels. Previous works on self-training acknowledge the importance of unlabeled data but have not delved into their efficient utilization, nor have they paid attention to the problem of high time consumption caused by iterative learning. This paper proposes Incremental Self-training (IST) for semi-supervised learning to fill these gaps. Unlike ST, which processes all data indiscriminately, IST processes data in batches and priority assigns pseudo-labels to unlabeled samples with high certainty. Then, it processes the data around the decision boundary after the model is stabilized, enhancing classifier performance. Our IST is simple yet effective and fits existing self-training-based semi-supervised learning methods. We verify the proposed IST on five datasets and two types of backbone, effectively improving the recognition accuracy and learning speed. Significantly, it outperforms state-of-the-art competitors on three challenging image classification tasks.
title Incremental Self-training for Semi-supervised Learning
topic Machine Learning
url https://arxiv.org/abs/2404.12398