FORGe at SemEval-2017 Task 9: Deep sentence generation based on a sequence of graph transducers

SEMEVAL 2017 Simon MilleRoberto CarliniAlicia BurgaLeo Wanner

We present the contribution of Universitat Pompeu Fabra{'}s NLP group to the SemEval Task 9.2 (AMR-to-English Generation). The proposed generation pipeline comprises: (i) a series of rule-based graph-transducers for the syntacticization of the input graphs and the resolution of morphological agreements, and (ii) an off-the-shelf statistical linearization component...

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