Thomson, CraigReiter, EhudSundararajan, Barkavi2024-01-052024-01-052023-05-01Thomson, C, Reiter, E & Sundararajan, B 2023, 'Evaluating factual accuracy in complex data-to-text', Computer Speech & Language, vol. 80, 101482. https://doi.org/10.1016/j.csl.2023.1014820885-2308RIS: urn:41BBD7453DE068D7A6FCAB2791693188ORCID: /0000-0002-7548-9504/work/126283888https://hdl.handle.net/2164/22498We are very grateful for the hard work of the Mechanical Turk annotators who did excellent work and provided helpful feedback. We would like to thank all of the participants in the shared task, the combination of their hard work and diverse approaches has been essential to furthering understanding of the factual accuracy problem in NLG. We would also like to thank Sam Wiseman, Ratish Puduppully, and Clément Rebuffel for providing outputs from their respective systems. The constructive and insightful feedback from the two anonymous reviewers was very helpful and we greatly appreciate their input. We would also like to thank Anya Belz for checking the German translation, as well as Moray Greig, our basketball domain expert. Finally, we would like to thank members of the Aberdeen CLAN group for their advice and feedback. Craig Thomson’s work on this project was supported under an EPSRC NPIF studentship grant (EP/R512412/1).20828009engNatural Language GenerationComplex data-to-textEvaluationAnnotationFactual accuracyNeural data-to-textQA75 Electronic computers. Computer scienceEngineering and Physical Sciences Research Council (EPSRC)EP/R512412/1QA75Evaluating factual accuracy in complex data-to-textJournal article10.1016/j.csl.2023.101482https://www.sciencedirect.com/science/article/pii/S088523082300001380