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End-to-end Graph-based TAG Parsing with Neural Networks (1804.06610v3)

Published 18 Apr 2018 in cs.CL

Abstract: We present a graph-based Tree Adjoining Grammar (TAG) parser that uses BiLSTMs, highway connections, and character-level CNNs. Our best end-to-end parser, which jointly performs supertagging, POS tagging, and parsing, outperforms the previously reported best results by more than 2.2 LAS and UAS points. The graph-based parsing architecture allows for global inference and rich feature representations for TAG parsing, alleviating the fundamental trade-off between transition-based and graph-based parsing systems. We also demonstrate that the proposed parser achieves state-of-the-art performance in the downstream tasks of Parsing Evaluation using Textual Entailments (PETE) and Unbounded Dependency Recovery. This provides further support for the claim that TAG is a viable formalism for problems that require rich structural analysis of sentences.

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Authors (5)
  1. Jungo Kasai (38 papers)
  2. Robert Frank (23 papers)
  3. Pauli Xu (1 paper)
  4. William Merrill (36 papers)
  5. Owen Rambow (26 papers)
Citations (16)

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