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A Deep Ensemble Model with Slot Alignment for Sequence-to-Sequence Natural Language Generation

About

Natural language generation lies at the core of generative dialogue systems and conversational agents. We describe an ensemble neural language generator, and present several novel methods for data representation and augmentation that yield improved results in our model. We test the model on three datasets in the restaurant, TV and laptop domains, and report both objective and subjective evaluations of our best model. Using a range of automatic metrics, as well as human evaluators, we show that our approach achieves better results than state-of-the-art models on the same datasets.

Juraj Juraska, Panagiotis Karagiannis, Kevin K. Bowden, Marilyn A. Walker• 2018

Related benchmarks

TaskDatasetResultRank
Natural language generationE2E (test)
ROUGE-L67.72
79
Data-to-text generationE2E (test)
BLEU66.19
33
Natural language generationLaptop RNNLG benchmark (test)
BLEU52.38
4
Natural language generationTV RNNLG benchmark (test)
BLEU Score0.5226
4
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Code

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