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Coarse-to-Fine Pre-training for Named Entity Recognition (2010.08210v1)

Published 16 Oct 2020 in cs.CL

Abstract: More recently, Named Entity Recognition hasachieved great advances aided by pre-trainingapproaches such as BERT. However, currentpre-training techniques focus on building lan-guage modeling objectives to learn a gen-eral representation, ignoring the named entity-related knowledge. To this end, we proposea NER-specific pre-training framework to in-ject coarse-to-fine automatically mined entityknowledge into pre-trained models. Specifi-cally, we first warm-up the model via an en-tity span identification task by training it withWikipedia anchors, which can be deemed asgeneral-typed entities. Then we leverage thegazetteer-based distant supervision strategy totrain the model extract coarse-grained typedentities. Finally, we devise a self-supervisedauxiliary task to mine the fine-grained namedentity knowledge via clustering.Empiricalstudies on three public NER datasets demon-strate that our framework achieves significantimprovements against several pre-trained base-lines, establishing the new state-of-the-art per-formance on three benchmarks. Besides, weshow that our framework gains promising re-sults without using human-labeled trainingdata, demonstrating its effectiveness in label-few and low-resource scenarios

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Authors (6)
  1. Mengge Xue (6 papers)
  2. Bowen Yu (89 papers)
  3. Zhenyu Zhang (250 papers)
  4. Tingwen Liu (45 papers)
  5. Yue Zhang (620 papers)
  6. Bin Wang (750 papers)
Citations (47)

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