Naive semi-supervised deep learning using pseudo-label

被引:0
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作者
Zhun Li
ByungSoo Ko
Ho-Jin Choi
机构
[1] Korea Advanced Institute of Science and Technology (KAIST),Knowledge Engineering and Collective Intelligence Lab, School of Computing
关键词
Deep learning; Semi-supervised learning; Pseudo-label; Pre-training;
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学科分类号
摘要
To facilitate the utilization of large-scale unlabeled data, we propose a simple and effective method for semi-supervised deep learning that improves upon the performance of the deep learning model. First, we train a classifier and use its outputs on unlabeled data as pseudo-labels. Then, we pre-train the deep learning model with the pseudo-labeled data and fine-tune it with the labeled data. The repetition of pseudo-labeling, pre-training, and fine-tuning is called naive semi-supervised deep learning. We apply this method to the MNIST, CIFAR-10, and IMDB data sets, which are each divided into a small labeled data set and a large unlabeled data set by us. Our method achieves significant performance improvements compared to the deep learning model without pre-training. We further analyze the factors that affect our method to provide a better understanding of how to utilize naive semi-supervised deep learning in practical application.
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页码:1358 / 1368
页数:10
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