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Regularization for Long Named Entity Recognition

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When performing named entity recognition (NER), entity length is variable and dependent on a specific domain or dataset. Pre-trained language models (PLMs) are used to solve NER tasks and tend to be biased toward dataset patterns such as length statistics, surface form, and skewed class distribution. These biases hinder the generalization ability of PLMs, which is necessary to address many unseen mentions in real-world situations. We propose a novel debiasing method RegLER to improve predictions for entities of varying lengths. To close the gap between evaluation and real-world situations, we evaluated PLMs on partitioned benchmark datasets containing unseen mention sets. Here, RegLER shows significant improvement over long-named entities that can predict through debiasing on conjunction or special characters within entities. Furthermore, there is a severe class imbalance in most NER datasets, causing easy-negative examples to dominate during training, such as "The". Our approach alleviates skewed class distribution by reducing the influence of easy-negative examples. Extensive experiments on the biomedical and general domains demonstrated the generalization capabilities of our method. To facilitate reproducibility and future work, we release our code."https://github.com/minstar/RegLER"

Minbyul Jeong, Jaewoo Kang• 2021

Related benchmarks

TaskDatasetResultRank
Named Entity RecognitionWnut 2017
F1 Score58.9
79
Named Entity RecognitionBC5CDR chem
Total F194.4
18
Named Entity RecognitionBC5CDR-Disease
Total F186.9
18
Named Entity RecognitionS800
Total F175.6
17
Named Entity RecognitionBC4CHEMD
Total F193.6
16
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