Traditionally, most data-to-text applications have been designed using a modular pipeline architecture, in which non-linguistic input data is converted into natural language through several intermediate transformations. In contrast, recent neural models for data-to-text generation have been proposed as end-to-end approaches, where the non-linguistic input is rendered in natural language with much less explicit intermediate representations in-between. This study introduces a systematic comparison between neural pipeline and end-to-end data-to-text approaches for the generation of text from RDF triples. Both architectures were implemented making use of state-of-the art deep learning methods as the encoder-decoder Gated-Recurrent Units (GRU) and Transformer. Automatic and human evaluations together with a qualitative analysis suggest that having explicit intermediate steps in the generation process results in better texts than the ones generated by end-to-end approaches. Moreover, the pipeline models generalize better to unseen inputs. Data and code are publicly available.
Neural data-to-text generation: A comparison between pipeline and end-to-end architectures
A systematic comparison shows that pipeline models equipped with explicit intermediate steps outperform end-to-end models in generating text from RDF triples and generalize better to new data.
- Year
- 2019
- Venue
- neural-data-to-text-generation-a-comparison-1
- Authors
- 4
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- Abstract onlyARXIV-DEFAULT
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- Abstract & full text
- arxiv.org/abs/1908.09022v2ARXIV-DEFAULT
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