Despite the widespread success of self-supervised learning via masked language models (MLM), accurately capturing fine-grained semantic relationships in the biomedical domain remains a challenge. This is of paramount importance for entity-level tasks such as entity linking where the ability to model entity relations (especially synonymy) is pivotal. To address this challenge, we propose SapBERT, a pretraining scheme that self-aligns the representation space of biomedical entities. We design a scalable metric learning framework that can leverage UMLS, a massive collection of biomedical ontologies with 4M+ concepts. In contrast with previous pipeline-based hybrid systems, SapBERT offers an elegant one-model-for-all solution to the problem of medical entity linking (MEL), achieving a new state-of-the-art (SOTA) on six MEL benchmarking datasets. In the scientific domain, we achieve SOTA even without task-specific supervision. With substantial improvement over various domain-specific pretrained MLMs such as BioBERT, SciBERTand and PubMedBERT, our pretraining scheme proves to be both effective and robust.
Self-Alignment Pretraining for Biomedical Entity Representations
SapBERT, a self-aligning pretraining scheme using metric learning with UMLS, achieves state-of-the-art performance in medical entity linking across datasets without task-specific supervision.
- Year
- 2020
- Venue
- NAACL 2021 4
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- 5
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2010.11784v2ARXIV-DEFAULT
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