Abstract
The Shared Task on Evaluating Accuracy focused on techniques (both manual and automatic) for evaluating the factual accuracy of texts produced by neural NLG systems, in a sports-reporting domain. Four teams submitted evaluation techniques for this task, using very different approaches and techniques. The best-performing submissions did encouragingly well at this difficult task. However, all automatic submissions struggled to detect factual errors which are semantically or pragmatically complex (for example, based on incorrect computation or inference).
Cite
CITATION STYLE
Thomson, C., & Reiter, E. (2021). Generation Challenges: Results of the Accuracy Evaluation Shared Task. In INLG 2021 - 14th International Conference on Natural Language Generation, Proceedings (pp. 240–248). Association for Computational Linguistics (ACL). https://doi.org/10.18653/v1/2021.inlg-1.23
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