In-Order Transition-based Constituent Parsing

Both bottom-up and top-down strategies have been used for neural transition-based constituent parsing. The parsing strategies differ in terms of the order in which they recognize productions in the derivation tree, where bottom-up strategies and top-down strategies take post-order and pre-order trav...

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Veröffentlicht in:Transactions of the Association for Computational Linguistics 2017-12, Vol.5, p.413-424
Hauptverfasser: Liu, Jiangming, Zhang, Yue
Format: Artikel
Sprache:eng
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Zusammenfassung:Both bottom-up and top-down strategies have been used for neural transition-based constituent parsing. The parsing strategies differ in terms of the order in which they recognize productions in the derivation tree, where bottom-up strategies and top-down strategies take post-order and pre-order traversal over trees, respectively. Bottom-up parsers benefit from rich features from readily built partial parses, but lack lookahead guidance in the parsing process; top-down parsers benefit from non-local guidance for local decisions, but rely on a strong encoder over the input to predict a constituent hierarchy before its construction. To mitigate both issues, we propose a novel parsing system based on in-order traversal over syntactic trees, designing a set of transition actions to find a compromise between bottom-up constituent information and top-down lookahead information. Based on stack-LSTM, our psycholinguistically motivated constituent parsing system achieves 91.8 F on the WSJ benchmark. Furthermore, the system achieves 93.6 F with supervised reranking and 94.2 F with semi-supervised reranking, which are the best results on the WSJ benchmark.
ISSN:2307-387X
2307-387X
DOI:10.1162/tacl_a_00070