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Investigating Non-local Features for Neural Constituency Parsing

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arxiv 2109.12814 v2 pith:S73DJNAI submitted 2021-09-27 cs.CL

Investigating Non-local Features for Neural Constituency Parsing

classification cs.CL
keywords non-localfeaturesperformancelocalneuralparserachievesbetter
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Thanks to the strong representation power of neural encoders, neural chart-based parsers have achieved highly competitive performance by using local features. Recently, it has been shown that non-local features in CRF structures lead to improvements. In this paper, we investigate injecting non-local features into the training process of a local span-based parser, by predicting constituent n-gram non-local patterns and ensuring consistency between non-local patterns and local constituents. Results show that our simple method gives better results than the self-attentive parser on both PTB and CTB. Besides, our method achieves state-of-the-art BERT-based performance on PTB (95.92 F1) and strong performance on CTB (92.31 F1). Our parser also achieves better or competitive performance in multilingual and zero-shot cross-domain settings compared with the baseline.

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