Incorrect labels in training data occur when human annotators make mistakes or when the data is generated via weak or distant supervision. It has been shown that complex noise-handling techniques - by modeling, cleaning or filtering the noisy instances - are required to prevent models from fitting this label noise. However, we show in this work that, for text classification tasks with modern NLP models like BERT, over a variety of noise types, existing noise-handling methods do not always improve its performance, and may even deteriorate it, suggesting the need for further investigation. We also back our observations with a comprehensive analysis.
CITATION STYLE
Zhu, D., Hedderich, M. A., Zhai, F., Adelani, D. I., & Klakow, D. (2022). Is BERT Robust to Label Noise? A Study on Learning with Noisy Labels in Text Classification. In Insights 2022 - 3rd Workshop on Insights from Negative Results in NLP, Proceedings of the Workshop (pp. 62–67). Association for Computational Linguistics (ACL). https://doi.org/10.18653/v1/2022.insights-1.8
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