Credit and blame for AI–generated content: Effects of personalization in four countries
Metadatos
Mostrar el registro completo del ítemAutor
D. Earp, Brian; Porsdam Mann, Sebastian; Liu, Peng; Rodríguez Hannikainen, Ivar Allan; Ali Khan, Maryam; Chu, Yueying; Savulescu, JulianEditorial
Wiley Online Library
Materia
credit–blame asymmetry generative artificial intelligence large language model
Fecha
2024-11-25Referencia bibliográfica
D. Earp, B. et. al. AnnNYAcad Sci. 2024;1542:51–57. [https://doi.org/10.1111/nyas.15258]
Patrocinador
Wellcome Trust (grant number: WT203132/Z/16/Z); European Commision (CAVAA; grant number: EIC 101071178; Brian D. Earp, Maryam Ali Khan), the Novo Nordisk Foundation (grant number: NNF23SA0087056; Sebastian Porsdam Mann), the Spanish Ministry of Science, Innovation and Universities (grant numbers: CNS2023-144543, RYC2020-029280-I; Ivar Hannikainen), the National Research Foundation, Singapore (grant number: AISG3- GV-2023-012; Julian Savulescu) and the Wellcome Trust (grant number: 226801; Julian Savulescu); University of Granada/Consortium of University Libraries of Andalusia (CBUA)Resumen
Generative artificial intelligence (AI) raises ethical questions concerning moral and
legal responsibility—specifically, the attributions of credit and blame for AI-generated
content. For example, if a human invests minimal skill or effort to produce a beneficial
output with an AI tool, can the human still take credit? How does the answer change
if the AI has been personalized (i.e., fine-tuned) on previous outputs produced without
AI assistance by the same human?We conducted a preregistered experiment with
representative sampling (N = 1802) repeated in four countries (United States, United
Kingdom, China, and Singapore).We investigated laypeople’s attributions of credit and
blame to human users for producing beneficial or harmful outputs with a standard
large language model (LLM), a personalized LLM, or no AI assistance (control condition).
Participants generally attributed more credit to human users of personalized
versus standard LLMs for beneficial outputs, whereas LLM type did not significantly
affect blame attributions for harmful outputs, with a partial exception among Chinese
participants. In addition, UK participants attributed more blame for using any type
of LLM versus no LLM. Practical, ethical, and policy implications of these findings are
discussed.