2021
DOI: 10.20944/preprints202103.0754.v1
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Augmenting Paraphrase Generation with Syntax Information using Graph Convolutional Networks

Abstract: Paraphrase generation is an important yet challenging task in NLP. Neural network-based approaches have achieved remarkable success in sequence-to-sequence(seq2seq) learning. Previous paraphrase generation work generally ignores syntactic information regardless of its availability, with the assumption that neural nets could learn such linguistic knowledge implicitly. In this work we make an endeavor to probe into the efficacy of explicit syntactic information for the task of paraphrase generation. Syntactic in… Show more

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“…Tackling this issue (by adopting fuzzy logic-based techniques [30,31], for instance) could be considered a direction for future research. Leveraging both POS labels and syntax information such as dependency parses [32] in paraphrase generation models is also a potential direction for further study.…”
Section: Discussionmentioning
confidence: 99%
“…Tackling this issue (by adopting fuzzy logic-based techniques [30,31], for instance) could be considered a direction for future research. Leveraging both POS labels and syntax information such as dependency parses [32] in paraphrase generation models is also a potential direction for further study.…”
Section: Discussionmentioning
confidence: 99%