Variational Cross-domain Natural Language Generation for Spoken Dialogue Systems

Tseng, Bo-Hsiang, Kreyssig, Florian, Budzianowski, Pawel, Casanueva, Inigo, Wu, Yen-Chen, Ultes, Stefan, Gasic, Milica

arXiv.org Artificial Intelligence 

Cross-domain natural language generation (NLG) is still a difficult task within spoken dialogue modelling. Given a semantic representation provided by the dialogue manager, the language generator should generate sentences that convey desired information. Traditional template-based generators can produce sentences with all necessary information, but these sentences are not sufficiently diverse. With RNN-based models, the diversity of the generated sentences can be high, however, in the process some information is lost. In this work, we improve an RNN-based generator by considering latent information at the sentence level during generation using the conditional variational autoencoder architecture. We demonstrate that our model outperforms the original RNN-based generator, while yielding highly diverse sentences. In addition, our model performs better when the training data is limited.

Duplicate Docs Excel Report

Title
None found

Similar Docs  Excel Report  more

TitleSimilaritySource
None found