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A Hierarchical Model for Data-to-Text Generation

About

Transcribing structured data into natural language descriptions has emerged as a challenging task, referred to as "data-to-text". These structures generally regroup multiple elements, as well as their attributes. Most attempts rely on translation encoder-decoder methods which linearize elements into a sequence. This however loses most of the structure contained in the data. In this work, we propose to overpass this limitation with a hierarchical model that encodes the data-structure at the element-level and the structure level. Evaluations on RotoWire show the effectiveness of our model w.r.t. qualitative and quantitative metrics.

Cl\'ement Rebuffel, Laure Soulier, Geoffrey Scoutheeten, Patrick Gallinari• 2019

Related benchmarks

TaskDatasetResultRank
Data-to-text generationMLB (test)
RG Precision81.71
22
Data-to-text generationRotoWire (test)
Factual Support Score5.08
19
Data-to-text generationROTOWIRE English (test)
RG Score44.9
12
Data-to-text generationGerman ROTOWIRE (DE-RW) (test)
RG Score0.2
8
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