Non-neural Models Matter: A Re-evaluation of Neural Referring Expression Generation Systems

Publication date

2022-05

Authors

Same, Fahime
Chen, GuanyiISNI 0000000492852701
van Deemter, KeesISNI 0000000115590531

Editors

Advisors

Supervisors

Document Type

Part of book
Open Access logo

License

cc_by

Abstract

In recent years, neural models have often outperformed rule-based and classic Machine Learning approaches in NLG. These classic approaches are now often disregarded, for example when new neural models are evaluated. We argue that they should not be overlooked, since, for some tasks, well-designed non-neural approaches achieve better performance than neural ones. In this paper, the task of generating referring expressions in linguistic context is used as an example. We examined two very different English datasets (WEBNLG and WSJ), and evaluated each algorithm using both automatic and human evaluations. Overall, the results of these evaluations suggest that rule-based systems with simple rule sets achieve on-par or better performance on both datasets compared to state-of-the-art neural REG systems. In the case of the more realistic dataset, WSJ, a machine learning-based system with well-designed linguistic features performed best. We hope that our work can encourage researchers to consider non-neural models in future.

Keywords

Citation

Same, F, Chen, G & van Deemter, K 2022, Non-neural Models Matter : A Re-evaluation of Neural Referring Expression Generation Systems. in Proceedings of ACL 2022. Association for Computational Linguistics, pp. 5554–5567. https://doi.org/10.18653/v1/2022.acl-long.380