Learning to Select, Track, and Generate for Data-to-Text

ACL 2019 Hayate IsoYui UeharaTatsuya IshigakiHiroshi NojiEiji AramakiIchiro KobayashiYusuke MiyaoNaoaki OkazakiHiroya Takamura

We propose a data-to-text generation model with two modules, one for tracking and the other for text generation. Our tracking module selects and keeps track of salient information and memorizes which record has been mentioned... (read more)

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