This joke is [MASK]: Recognizing Humor and Offense with Prompting
Li, Junze, Zhao, Mengjie, Xie, Yubo, Maronikolakis, Antonis, Pu, Pearl, Schütze, Hinrich
–arXiv.org Artificial Intelligence
Humor is a magnetic component in everyday human interactions and communications. Computationally modeling humor enables NLP systems to entertain and engage with users. We investigate the effectiveness of prompting, a new transfer learning paradigm for NLP, for humor recognition. We show that prompting performs similarly to finetuning when numerous annotations are available, but gives stellar performance in low-resource humor recognition. The relationship between humor and offense is also inspected by applying influence functions to prompting; we show that models could rely on offense to determine humor during transfer. Disclaimer: This paper contains model outputs that are offensive by nature.
arXiv.org Artificial Intelligence
Oct-25-2022
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