AI RESEARCH
Dark & Stormy: Modeling Humor in Sentences from the Bulwer-Lytton Fiction Contest
arXiv CS.CL
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ArXi:2510.24538v2 Announce Type: replace Textual humor is enormously diverse and computational studies need to account for this range, including intentionally bad humor. In this paper, we curate and analyze a novel corpus of sentences from the Bulwer-Lytton Fiction Contest to better understand "bad" humor in English. Standard humor detection models perform poorly on our corpus, and an analysis of literary devices finds that these sentences combine features common in existing humor datasets (e.g., puns, irony) with metaphor, metafiction and simile.