Generating ironic content is challenging: it requires a nuanced understanding of context and implicit references and balancing seriousness and playfulness. Moreover, irony is highly subjective and can depend on various factors, such as social, cultural, or generational aspects. This paper explores whether Large Language Models (LLMs) can learn to generate ironic responses to social media posts. To do so, we fine-tune two models to generate ironic and non-ironic content and deeply analyze their outputs{'} linguistic characteristics, their connection to the original post, and their similarity to the human-written replies. We also conduct a large-scale human evaluation of the outputs. Additionally, we investigate whether LLMs can learn a form of irony tied to a generational perspective, with mixed results.

I'm sure you're a real scholar yourself: Exploring Ironic Content Generation by Large Language Models

Balestrucci, Pier Felice
;
Casola, Silvia
;
Lo, Soda Marem
;
Basile, Valerio;Mazzei, Alessandro
2024-01-01

Abstract

Generating ironic content is challenging: it requires a nuanced understanding of context and implicit references and balancing seriousness and playfulness. Moreover, irony is highly subjective and can depend on various factors, such as social, cultural, or generational aspects. This paper explores whether Large Language Models (LLMs) can learn to generate ironic responses to social media posts. To do so, we fine-tune two models to generate ironic and non-ironic content and deeply analyze their outputs{'} linguistic characteristics, their connection to the original post, and their similarity to the human-written replies. We also conduct a large-scale human evaluation of the outputs. Additionally, we investigate whether LLMs can learn a form of irony tied to a generational perspective, with mixed results.
2024
Empirical Methods in Natural Language Processing
Miami
November 12 –16, 2024
Findings of the Association for Computational Linguistics: EMNLP 2024
Association for Computational Linguistics
14480
14494
https://aclanthology.org/2024.findings-emnlp.847
Balestrucci, Pier Felice; Casola, Silvia; Lo, Soda Marem; Basile, Valerio; Mazzei, Alessandro
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2318/2039290
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