Can LLMs Cook Jamaican Couscous? A Study of Cultural Novelty in Recipe Generation
F. Carichon, R. Rampa, G. Farnadi

TL;DR
This study investigates whether large language models can generate culturally authentic recipes, revealing that they currently fail to produce culturally representative adaptations and highlighting limitations in their understanding of cultural nuances.
Contribution
The paper introduces a novel analysis of LLMs' ability to adapt recipes across cultures using the GlobalFusion dataset, revealing significant gaps in cultural representation.
Findings
LLMs do not correlate recipe divergence with cultural distance.
Cultural information is weakly preserved in model representations.
Models inflate novelty by misunderstanding cultural concepts.
Abstract
Large Language Models (LLMs) are increasingly used to generate and shape cultural content, ranging from narrative writing to artistic production. While these models demonstrate impressive fluency and generative capacity, prior work has shown that they also exhibit systematic cultural biases, raising concerns about stereotyping, homogenization, and the erasure of culturally specific forms of expression. Understanding whether LLMs can meaningfully align with diverse cultures beyond the dominant ones remains a critical challenge. In this paper, we study cultural adaptation in LLMs through the lens of cooking recipes, a domain in which culture, tradition, and creativity are tightly intertwined. We build on the \textit{GlobalFusion} dataset, which pairs human recipes from different countries according to established measures of cultural distance. Using the same country pairs, we generate…
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Taxonomy
TopicsLanguage and cultural evolution · Computational and Text Analysis Methods · Machine Learning in Materials Science
