Creating a digital poet
Abstract
Can a machine write good poetry? Any positive answer raises fundamental questions about the nature and value of art. We report a seven-month poetry workshop in which a large language model was shaped into a digital poet through iterative in-context expert feedback, without retraining. Across sessions, the model developed a distinctive style and a coherent corpus, supported by quantitative and qualitative analyses, and it produced a pen name and author image. In a blinded authorship test with 50 humanities students and graduates (three AI poems and three poems by well-known poets each), judgments were at chance: human poems were labeled human 54% of the time and AI poems 52%, with 95% confidence intervals including 50%. After the workshop, a commercial publisher released a poetry collection authored by the model. These results show that workshop-style prompting can support long-horizon creative shaping and renew debates on creativity and authorship.
Keywords
Cite
@article{arxiv.2602.16578,
title = {Creating a digital poet},
author = {Vered Tohar and Tsahi Hayat and Amir Leshem},
journal= {arXiv preprint arXiv:2602.16578},
year = {2026}
}
Comments
24 pages, 3 figures