Computational Linguistics (Jul 2021)

Universal Discourse Representation Structure Parsing

  • Jiangming Liu,
  • Shay B. Cohen,
  • Mirella Lapata,
  • Johan Bos

DOI
https://doi.org/10.1162/coli_a_00406
Journal volume & issue
Vol. 47, no. 2
pp. 445 – 476

Abstract

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AbstractWe consider the task of crosslingual semantic parsing in the style of Discourse Representation Theory (DRT) where knowledge from annotated corpora in a resource-rich language is transferred via bitext to guide learning in other languages. We introduce 𝕌niversal Discourse Representation Theory (𝕌DRT), a variant of DRT that explicitly anchors semantic representations to tokens in the linguistic input. We develop a semantic parsing framework based on the Transformer architecture and utilize it to obtain semantic resources in multiple languages following two learning schemes. The many-to-one approach translates non-English text to English, and then runs a relatively accurate English parser on the translated text, while the one-to-many approach translates gold standard English to non-English text and trains multiple parsers (one per language) on the translations. Experimental results on the Parallel Meaning Bank show that our proposal outperforms strong baselines by a wide margin and can be used to construct (silver-standard) meaning banks for 99 languages.