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
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Data-to-text generation | MLB (test) | RG Precision81.71 | 22 | |
| Data-to-text generation | RotoWire (test) | Factual Support Score5.08 | 19 | |
| Data-to-text generation | ROTOWIRE English (test) | RG Score44.9 | 12 | |
| Data-to-text generation | German ROTOWIRE (DE-RW) (test) | RG Score0.2 | 8 |
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