Parsing linearizations appreciate PoS tags - but some are fussy about errors

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- Investigación (FFIL) [877]
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Parsing linearizations appreciate PoS tags - but some are fussy about errorsDate
2022-11Citation
Alberto Muñoz-Ortiz, Mark Anderson, David Vilares, and Carlos Gómez-Rodríguez. 2022. Parsing linearizations appreciate PoS tags - but some are fussy about errors. In Proceedings of the 2nd Conference of the Asia-Pacific Chapter of the Association for Computational Linguistics and the 12th International Joint Conference on Natural Language Processing (Volume 2: Short Papers), pages 117–127, Online only. Association for Computational Linguistics.
Abstract
[Absctract]: PoS tags, once taken for granted as a useful resource for syntactic parsing, have become more situational with the popularization of deep learning. Recent work on the impact of PoS tags on graph- and transition-based parsers suggests that they are only useful when tagging accuracy is prohibitively high, or in low-resource scenarios. However, such an analysis is lacking for the emerging sequence labeling parsing paradigm, where it is especially relevant as some models explicitly use PoS tags for encoding and decoding. We undertake a study and uncover some trends. Among them, PoS tags are generally more useful for sequence labeling parsers than for other paradigms, but the impact of their accuracy is highly encoding-dependent, with the PoS-based head-selection encoding being best only when both tagging accuracy and resource availability are high.
Keywords
Part-of-Speech Tags
Sequence Labeling Parsing
POS tags
Syntactic Parsing
Tagging Accuracy
POS tags
Sequence Labeling Parsing
POS tags
Syntactic Parsing
Tagging Accuracy
POS tags
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It was held in Taipei, China. Nov 21, 2022 - Nov 23, 2022
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Atribución 3.0 España