Culture Affordance Atlas: Reconciling Object Diversity Through Functional Mapping

Authors

  • Joan Nwatu University of Michigan - Ann Arbor
  • Longju Bai University of Michigan - Ann Arbor
  • Oana Ignat Santa Clara University
  • Rada Mihalcea University of Michigan - Ann Arbor

DOI:

https://doi.org/10.1609/aaai.v40i46.41256

Abstract

Culture shapes the objects people use and for what purposes, yet mainstream Vision-Language (VL) datasets frequently exhibit cultural biases, disproportionately favoring higher-income, Western contexts. This imbalance reduces model generalizability and perpetuates performance disparities, especially impacting lower-income and non-Western communities. To address these disparities, we propose a novel function-centric framework that categorizes objects by the functions they fulfill, across diverse cultural and economic contexts. We implement this framework by creating the Culture Affordance Atlas, a re-annotated and culturally grounded restructuring of the Dollar Street dataset spanning 46 functions and 288 objects. Through extensive empirical analyses using the CLIP model, we demonstrate that function-centric labels substantially reduce socioeconomic performance gaps between high and low-income groups by a median of 6 pp (statistically significant), improving model effectiveness for lower income contexts. Furthermore, our analyses reveals numerous culturally essential objects that are frequently overlooked in prominent VL datasets. Our contributions offer a scalable pathway toward building inclusive VL datasets and equitable AI systems.

Published

2026-03-14

How to Cite

Nwatu, J., Bai, L., Ignat, O., & Mihalcea, R. (2026). Culture Affordance Atlas: Reconciling Object Diversity Through Functional Mapping. Proceedings of the AAAI Conference on Artificial Intelligence, 40(46), 39089–39097. https://doi.org/10.1609/aaai.v40i46.41256