Linguistic realisation as machine translation: Comparing different MT models for AMR-to-text generation

WS 2017  ·  Thiago Castro Ferreira, Iacer Calixto, S Wubben, er, Emiel Krahmer ·

In this paper, we study AMR-to-text generation, framing it as a translation task and comparing two different MT approaches (Phrase-based and Neural MT). We systematically study the effects of 3 AMR preprocessing steps (Delexicalisation, Compression, and Linearisation) applied before the MT phase. Our results show that preprocessing indeed helps, although the benefits differ for the two MT models.

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