Effective Multi-Task Learning for Biomedical Named Entity Recognition
Effective Multi-Task Learning for Biomedical Named Entity Recognition
Biomedical Named Entity Recognition presents significant challenges due to the complexity of biomedical terminology and inconsistencies in annotation across datasets. This paper introduces SRU-NER (Slot-based Recurrent Unit NER), a novel approach designed to handle nested named entities while integrating multiple datasets through an effective multi-task learning strategy. SRU-NER mitigates annotation gaps by dynamically adjusting loss computation to avoid penalizing predictions of entity types absent in a given dataset. Through extensive experiments, including a cross-corpus evaluation and human assessment of the model's predictions, SRU-NER achieves competitive performance in biomedical and general-domain NER tasks, while improving cross-domain generalization.
João Ruano、Gonçalo M. Correia、Leonor Barreiros、Afonso Mendes
医药卫生理论生物科学研究方法、生物科学研究技术
João Ruano,Gonçalo M. Correia,Leonor Barreiros,Afonso Mendes.Effective Multi-Task Learning for Biomedical Named Entity Recognition[EB/OL].(2025-07-24)[2025-08-10].https://arxiv.org/abs/2507.18542.点此复制
评论