English

Universal statistical laws governing culinary design

Physics and Society 2026-05-01 v1 Computation and Language

Abstract

Cooking is a cultural expression of human creativity that transcends geography and time through the orchestration of ingredients and techniques, much like languages do through words and syntax. Yet, beneath the apparent diversity of culinary traditions, whether recipes obey statistical laws comparable to those of other symbolic systems remains unknown. Here we analyze a large corpus of traditional recipes spanning global cuisines, annotated using a state-of-the-art named entity recognition algorithm into ingredients, cooking techniques, utensils, and other culinary attributes. We find that ingredient usage exhibits Zipf-like rank-frequency scaling, that culinary diversity grows sublinearly with corpus size in accordance with Heaps' law, and that recipe complexity follows Menzerath-Altmann-type relations between the number and average information of constituent units. Consistent with observations in packaged foods, macronutrient concentrations across recipes also display a log-normal signature. Minimal generative models based on preferential reuse, constrained sampling, and incremental modification recapitulate these regularities, suggesting generic processes that shape recipe architecture across cultures. Together, these findings establish recipes as a compositional symbolic system in which complex structure emerges from simple, constrained generative processes.

Cite

@article{arxiv.2604.28021,
  title  = {Universal statistical laws governing culinary design},
  author = {Ganesh Bagler and Gopal Krishna Tewari and Aditya Raj Yadav and Akshat Singh and Pranay Bansal and Ujjval Dargar and Mansi Goel and Madhvi Kumari Sinha},
  journal= {arXiv preprint arXiv:2604.28021},
  year   = {2026}
}

Comments

48 Pages (28 Pages of Main Manuscript + Supplementary Information), 4 Main Figures, 6 Extended Data Figures

R2 v1 2026-07-01T12:43:51.556Z