Bracketing Encodings for 2-Planar Dependency Parsing
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- Investigación (FFIL) [805]
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Bracketing Encodings for 2-Planar Dependency ParsingDate
2020-12Citation
Michalina Strzyz, David Vilares, and Carlos Gómez-Rodríguez. 2020. Bracketing Encodings for 2-Planar Dependency Parsing. In Proceedings of the 28th International Conference on Computational Linguistics, pages 2472–2484, Barcelona, Spain (Online). International Committee on Computational Linguistics.
Abstract
[Absctract]: We present a bracketing-based encoding that can be used to represent any 2-planar dependency tree over a sentence of length n as a sequence of n labels, hence providing almost total coverage of crossing arcs in sequence labeling parsing. First, we show that existing bracketing encodings for parsing as labeling can only handle a very mild extension of projective trees. Second, we overcome this limitation by taking into account the well-known property of 2-planarity, which is present in the vast majority of dependency syntactic structures in treebanks, i.e., the arcs of a dependency tree can be split into two planes such that arcs in a given plane do not cross. We take advantage of this property to design a method that balances the brackets and that encodes the arcs belonging to each of those planes, allowing for almost unrestricted non-projectivity (∼99.9% coverage) in sequence labeling parsing. The experiments show that our linearizations improve over the accuracy of the original bracketing encoding in highly non-projective treebanks (on average by 0.4 LAS), while achieving a similar speed. Also, they are especially suitable when PoS tags are not used as input parameters to the models.
Keywords
2-Planar dependency parsing
Bracketing Encodings
Non-Projective Trees
Sequence Labeling
Bracketing Encodings
Non-Projective Trees
Sequence Labeling
Description
Held online due to COVID-19. December 2020, Barcelona, Spain
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Atribución 3.0 España