arXiv Analytics

Sign in

arXiv:1809.05715 [cs.CL]AbstractReferencesReviewsResources

Abstractive Dialogue Summarization with Sentence-Gated Modeling Optimized by Dialogue Acts

Chih-Wen Goo, Yun-Nung Chen

Published 2018-09-15Version 1

Neural abstractive summarization has been increasingly studied, where the prior work mainly focused on summarizing single-speaker documents (news, scientific publications, etc). In dialogues, there are different interactions between speakers, which are usually defined as dialogue acts. The interactive signals may provide informative cues for better summarizing dialogues. This paper proposes to explicitly leverage dialogue acts in a neural summarization model, where a sentence-gated mechanism is designed for modeling the relationship between dialogue acts and the summary. The experiments show that our proposed model significantly improves the abstractive summarization performance compared to the state-of-the-art baselines on AMI meeting corpus, demonstrating the usefulness of the interactive signal provided by dialogue acts.

Related articles: Most relevant | Search more
arXiv:2010.10044 [cs.CL] (Published 2020-10-20)
Incorporating Commonsense Knowledge into Abstractive Dialogue Summarization via Heterogeneous Graph Networks
arXiv:2209.00278 [cs.CL] (Published 2022-09-01)
Enhancing Semantic Understanding with Self-supervised Methods for Abstractive Dialogue Summarization
arXiv:2210.09894 [cs.CL] (Published 2022-10-18)
Taxonomy of Abstractive Dialogue Summarization: Scenarios, Approaches and Future Directions