PHELPS, Dylan, PICKARD, Thomas, MI, Maggie, GOW-SMITH, Edward and VILLAVICENCIO, Aline (2024). Sign of the Times: Evaluating the use of Large Language Models for Idiomaticity Detection. In: BHATIA, Archna, BOUMA, Gosse, DOĞRUÖZ, A. Seza, EVANG, Kilian, GARCIA, Marcos, GIOULI, Voula, HAN, Lifeng, NIVRE, Joakim and RADEMACHER, Alexandre, (eds.) Proceedings of the Joint Workshop on Multiword Expressions and Universal Dependencies (MWE-UD) @ LREC-COLING 2024. ELRA and ICCL, 178-187. [Book Section]
Documents
37457:1336078
PDF
Pickard-SignOfTheTimes(VoR).pdf - Published Version
Available under License Creative Commons Attribution Non-commercial.
Pickard-SignOfTheTimes(VoR).pdf - Published Version
Available under License Creative Commons Attribution Non-commercial.
Download (314kB) | Preview
Abstract
Despite the recent ubiquity of large language models and their high zero-shot prompted performance across a wide range of tasks, it is still not known how well they perform on tasks which require processing of potentially idiomatic language. In particular, how well do such models perform in comparison to encoder-only models fine-tuned specifically for idiomaticity tasks? In this work, we attempt to answer this question by looking at the performance of a range of LLMs (both local and software-as-a-service models) on three idiomaticity datasets: SemEval 2022 Task 2a, FLUTE, and MAGPIE. Overall, we find that whilst these models do give competitive performance, they do not match the results of fine-tuned task-specific models, even at the largest scales (e.g. for GPT-4). Nevertheless, we do see consistent performance improvements across model scale. Additionally, we investigate prompting approaches to improve performance, and discuss the practicalities of using LLMs for these tasks.
More Information
Statistics
Downloads
Downloads per month over past year
Metrics
Altmetric Badge
Dimensions Badge
Share
Actions (login required)
![]() |
View Item |


Tools
Tools