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Lexicon Enhanced Chinese Sequence Labeling Using BERT Adapter

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arxiv 2105.07148 v3 pith:GOZPO7G4 submitted 2021-05-15 cs.CL

Lexicon Enhanced Chinese Sequence Labeling Using BERT Adapter

classification cs.CL
keywords lexiconbertchinesesequencelayersadapterenhancedexisting
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Lexicon information and pre-trained models, such as BERT, have been combined to explore Chinese sequence labelling tasks due to their respective strengths. However, existing methods solely fuse lexicon features via a shallow and random initialized sequence layer and do not integrate them into the bottom layers of BERT. In this paper, we propose Lexicon Enhanced BERT (LEBERT) for Chinese sequence labelling, which integrates external lexicon knowledge into BERT layers directly by a Lexicon Adapter layer. Compared with the existing methods, our model facilitates deep lexicon knowledge fusion at the lower layers of BERT. Experiments on ten Chinese datasets of three tasks including Named Entity Recognition, Word Segmentation, and Part-of-Speech tagging, show that LEBERT achieves the state-of-the-art results.

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