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The Difficult Case of Intended and Perceived Sarcasm : a Challenge for Humans and Large Language Models

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2025

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EVANG, Kilian, Hrsg., Laura KALLMEYER, Hrsg., Sylvain POGODALLA, Hrsg.. 16th International Conference on Computational Semantics : Proceedings of the Conference, IWCS 2025. Kerrville, TX: Association for Computational Linguistics, 2025, S. 269-281. ISBN 979-8-89176-316-6

Zusammenfassung

We examine the cases of failed communication in sarcasm, defined as ‘the discrepancy between what speakers and observers perceive as sarcasm’. We identify factors that are associated with such failures, and how those difficult instances affect the detection performance of encoder-only and decoder-only generative models. We find that speakers’ incongruity between their felt annoyance and sarcasm in their utterance is highly correlated with sarcasm that fails to be communicated to human observers. This factor also relates to the drop of classification performance of large language models (LLMs). Additionally, disagreement among multiple observers about sarcasm is correlated with poorer performance of LLMs. Finally, we find that generative models produce better results with ground-truth labels from speakers than from observers, in contrast to encoder-only models, which suggests a general tendency by generative models to identify with speakers’ perspective by default.

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400 Sprachwissenschaft, Linguistik

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IWCS 2025 : 16th International Conference on Computational Semantics, 22. Sept. 2025 - 23. Sept. 2025, Düsseldorf
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ISO 690JANG, Hye Won, Diego FRASSINELLI, 2025. The Difficult Case of Intended and Perceived Sarcasm : a Challenge for Humans and Large Language Models. IWCS 2025 : 16th International Conference on Computational Semantics. Düsseldorf, 22. Sept. 2025 - 23. Sept. 2025. In: EVANG, Kilian, Hrsg., Laura KALLMEYER, Hrsg., Sylvain POGODALLA, Hrsg.. 16th International Conference on Computational Semantics : Proceedings of the Conference, IWCS 2025. Kerrville, TX: Association for Computational Linguistics, 2025, S. 269-281. ISBN 979-8-89176-316-6
BibTex
@inproceedings{Jang2025Diffi-76369,
  title={The Difficult Case of Intended and Perceived Sarcasm : a Challenge for Humans and Large Language Models},
  url={https://aclanthology.org/2025.iwcs-main.23/},
  year={2025},
  isbn={979-8-89176-316-6},
  address={Kerrville, TX},
  publisher={Association for Computational Linguistics},
  booktitle={16th International Conference on Computational Semantics : Proceedings of the Conference, IWCS 2025},
  pages={269--281},
  editor={Evang, Kilian and Kallmeyer, Laura and Pogodalla, Sylvain},
  author={Jang, Hye Won and Frassinelli, Diego}
}
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