Enhancing and Evaluating the Grammatical Framework Approach to Logic-to-Text Generation
Publication date
2022
Editors
Advisors
Supervisors
Document Type
Part of book
Metadata
Show full item recordCollections
License
cc_by
Abstract
Logic-to-text generation is an important yet underrepresented area of natural language generation (NLG). In particular, most previous works on this topic lack sound evaluation. We address this limitation by building and evaluating a system that generates high-quality English text given a first-order logic (FOL) formula as input. We start by analyzing the performance of Ranta (2011)’s system. Based on this analysis, we develop an extended version of the system, which we name LoLa, that performs formula simplification based on logical equivalences and syntactic transformations. We carry out an extensive evaluation of LoLa using standard automatic metrics and human evaluation. We compare the results against a baseline and Ranta (2011)’s system. The results show that LoLa outperforms the other two systems in most aspects.
Keywords
Citation
Caló, E, van der Werf, E, Gatt, A & van Deemter, K 2022, Enhancing and Evaluating the Grammatical Framework Approach to Logic-to-Text Generation. in Proceedings of the 2nd Generation, Evaluation and Metrics Workshop (GEM'22). Association for Computational Linguistics, pp. 148–171. https://doi.org/10.18653/v1/2022.gem-1.13