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Label-Weighted Graph-Based Learning for Semi-Supervised Classification Under Label Noise

Naiyao Liang, Zuyuan Yang, Junhang Chen, Zhenni Li, Shengli Xie

2023IEEE Transactions on Big Data17 citationsDOI

Abstract

Graph-based semi-supervised learning (GSSL) is a quite important technology due to its effectiveness in practice. Existing GSSL works often treat the given labels equally and ignore the unbalance importance of labels. In some inaccurate systems, the collected labels usually contain noise (noisy labels) and the methods treating labels equally suffer from the label noise. In this article, we propose a novel label-weighted learning method on graph for semi-supervised classification under label noise, which allows considering the contribution differences of labels. In particular, the label dependency of data is revealed by graph constraints. With the help of this label dependency, the proposed method develops the strategy of adaptive label weight, where label weights are assigned to labels adaptively. Accordingly, an efficient algorithm is developed to solve the proposed optimization objective, where each subproblem has a closed-form solution. Experimental results on a synthetic dataset and several real-world datasets show the advantage of the proposed method, compared to the state-of-the-art methods.

Topics & Concepts

Computer scienceArtificial intelligenceGraphDependency (UML)Noise (video)Pattern recognition (psychology)Machine learningSemi-supervised learningMulti-label classificationSupervised learningArtificial neural networkTheoretical computer scienceImage (mathematics)Machine Learning and Data ClassificationText and Document Classification TechnologiesFace and Expression Recognition
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