Neural sentence generation from formal semantics

WS 2018 Kana ManomeMasashi YoshikawaHitomi YanakaPascual Mart{\'\i}nez-G{\'o}mezKoji MineshimaDaisuke Bekki

Sequence-to-sequence models have shown strong performance in a wide range of NLP tasks, yet their applications to sentence generation from logical representations are underdeveloped. In this paper, we present a sequence-to-sequence model for generating sentences from logical meaning representations based on event semantics... (read more)

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