Point at the Triple: Generation of Text Summaries from Knowledge Base Triples (Extended Abstract)

Point at the Triple: Generation of Text Summaries from Knowledge Base Triples (Extended Abstract)

Pavlos Vougiouklis, Eddy Maddalena, Jonathon Hare, Elena Simperl

Proceedings of the Twenty-Ninth International Joint Conference on Artificial Intelligence
Journal track. Pages 5080-5084. https://doi.org/10.24963/ijcai.2020/711

We investigate the problem of generating natural language summaries from knowledge base triples. Our approach is based on a pointer-generator network, which, in addition to generating regular words from a fixed target vocabulary, is able to verbalise triples in several ways. We undertake an automatic and a human evaluation on single and open-domain summaries generation tasks. Both show that our approach significantly outperforms other data-driven baselines.
Keywords:
Natural Language Processing: Natural Language Generation
Machine Learning: Deep Generative Models
Machine Learning: Knowledge-based Learning