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Balancing Methods for Multi-label Text Classification with Long-Tailed Class Distribution

Yi Huang, Buse Giledereli, Abdullatif Köksal, Arzucan Özgür, Elif Özkırımlı

2021Proceedings of the 2021 Conference on Empirical Methods in Natural Language Processing80 citationsDOIOpen Access PDF

Abstract

Multi-label text classification is a challenging task because it requires capturing label dependencies. It becomes even more challenging when class distribution is long-tailed. Resampling and re-weighting are common approaches used for addressing the class imbalance problem, however, they are not effective when there is label dependency besides class imbalance because they result in oversampling of common labels. Here, we introduce the application of balancing loss functions for multilabel text classification. We perform experiments on a general domain dataset with 90 labels (Reuters-21578) and a domain-specific dataset from PubMed with 18211 labels. We find that a distribution-balanced loss function, which inherently addresses both the class imbalance and label linkage problems, outperforms commonly used loss functions. Distribution balancing methods have been successfully used in the image recognition field. Here, we show their effectiveness in natural language processing.

Topics & Concepts

Computer scienceClass (philosophy)Artificial intelligenceMulti-label classificationOversamplingMachine learningWeightingDependency (UML)Source codeField (mathematics)Data miningPattern recognition (psychology)MathematicsComputer networkOperating systemPure mathematicsRadiologyMedicineBandwidth (computing)Text and Document Classification TechnologiesImbalanced Data Classification TechniquesTopic Modeling