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Neighborhood-Regularized Self-Training for Learning with Few Labels

Ran Xu, Yue Yu, Hejie Cui, Xuan Kan, Yanqiao Zhu, Joyce C. Ho, Chao Zhang, Carl Yang

2023Proceedings of the AAAI Conference on Artificial Intelligence11 citationsDOIOpen Access PDF

Abstract

Training deep neural networks (DNNs) with limited supervision has been a popular research topic as it can significantly alleviate the annotation burden. Self-training has been successfully applied in semi-supervised learning tasks, but one drawback of self-training is that it is vulnerable to the label noise from incorrect pseudo labels. Inspired by the fact that samples with similar labels tend to share similar representations, we develop a neighborhood-based sample selection approach to tackle the issue of noisy pseudo labels. We further stabilize self-training via aggregating the predictions from different rounds during sample selection. Experiments on eight tasks show that our proposed method outperforms the strongest self-training baseline with 1.83% and 2.51% performance gain for text and graph datasets on average. Our further analysis demonstrates that our proposed data selection strategy reduces the noise of pseudo labels by 36.8% and saves 57.3% of the time when compared with the best baseline. Our code and appendices will be uploaded to https://github.com/ritaranx/NeST.

Topics & Concepts

Computer scienceArtificial intelligenceBaseline (sea)Machine learningSelection (genetic algorithm)Sample (material)Code (set theory)UploadGraphNoise (video)Training (meteorology)AnnotationArtificial neural networkImage (mathematics)Theoretical computer scienceWorld Wide WebMeteorologySet (abstract data type)PhysicsProgramming languageGeologyOceanographyChromatographyChemistryMachine Learning and Data ClassificationText and Document Classification TechnologiesHuman Pose and Action Recognition
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