Prompting Implicit Discourse Relation Annotation
Publication date
2024
Editors
Henning, Sophie
Stede, Manfred
Advisors
Supervisors
DOI
Document Type
Part of book
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cc_by
Abstract
Pre-trained large language models, such as ChatGPT, archive outstanding performance in various reasoning tasks without supervised training and were found to have outperformed crowdsourcing workers. Nonetheless, ChatGPT’s performance in the task of implicit discourse relation classification, prompted by a standard multiple-choice question, is still far from satisfactory and considerably inferior to state-of-the-art supervised approaches. This work investigates several proven prompting techniques to improve ChatGPT’s recognition of discourse relations. In particular, we experimented with breaking down the classification task that involves numerous abstract labels into smaller subtasks. Nonetheless, experiment results show that the inference accuracy hardly changes even with sophisticated prompt engineering, suggesting that implicit discourse relation classification is not yet resolvable under zero-shot or few-shot settings.
Keywords
Computational Theory and Mathematics, Software, Linguistics and Language
Citation
Yung, F, Ahmad, M, Scholman, M & Demberg, V 2024, Prompting Implicit Discourse Relation Annotation. in S Henning & M Stede (eds), Proceedings of The 18th Linguistic Annotation Workshop (LAW-XVIII). Association for Computational Linguistics, pp. 150-165, 18th Linguistic Annotation Workshop, LAW 2024, St. Julian's, Malta, 22/03/24. < https://aclanthology.org/2024.law-1.15/ >, conference