CISPA
Browse

The World Wide recipe: A community-centred framework for fine-grained data collection and regional bias operationalisation

Download (5.62 MB)
conference contribution
posted on 2025-07-04, 08:31 authored by Jabez Magomere, Shu Ishida, Tejumade AfonjaTejumade Afonja, Aya Salama, Daniel Kochin, Yuehgoh Foutse, Imane Hamzaoui, Raesetje Sefala, Aisha Alaagib, Samantha Dalal, Beatrice Marchegiani, Elizaveta Semenova, Lauren Crais, Siobhan Mackenzie Hall
We introduce the World Wide recipe, which sets forth a framework for culturally aware and participatory data collection, and the resultant regionally diverse World Wide Dishes evaluation dataset. We also analyse bias operationalisation to highlight how current systems underperform across several dimensions: (in-)accuracy, (mis-)representation, and cultural (in-)sensitivity, with evidence from qualitative community-based observations and quantitative automated tools. We find that these T2I models generally do not produce quality outputs of dishes specific to various regions. This is true even for the US, which is typically considered more well-resourced in training data—although the generation of US dishes does outperform that of the investigated African countries. The models demonstrate the propensity to produce inaccurate and culturally misrepresentative, flattening, and insensitive outputs. These representational biases have the potential to further reinforce stereotypes and disproportionately contribute to erasure based on region. The dataset and code are available at https://github.com/oxai/world-wide-dishes/.

History

Primary Research Area

  • Trustworthy Information Processing

Name of Conference

FAcct

CISPA Affiliation

  • Yes

Page Range

246-282

Publisher

Association for Computing Machinery (ACM)

Open Access Type

  • Hybrid

BibTeX

@conference{Magomere:Ishida:Afonja:Salama:Kochin:Foutse:Hamzaoui:Sefala:Alaagib:Dalal:Marchegiani:Semenova:Crais:Hall:2025, title = "The World Wide recipe: A community-centred framework for fine-grained data collection and regional bias operationalisation", author = "Magomere, Jabez" AND "Ishida, Shu" AND "Afonja, Tejumade" AND "Salama, Aya" AND "Kochin, Daniel" AND "Foutse, Yuehgoh" AND "Hamzaoui, Imane" AND "Sefala, Raesetje" AND "Alaagib, Aisha" AND "Dalal, Samantha" AND "Marchegiani, Beatrice" AND "Semenova, Elizaveta" AND "Crais, Lauren" AND "Hall, Siobhan Mackenzie", year = 2025, month = 6, pages = "246--282", publisher = "Association for Computing Machinery (ACM)", doi = "10.1145/3715275.3732019" }

Usage metrics

    Categories

    No categories selected

    Licence

    Exports

    RefWorks
    BibTeX
    Ref. manager
    Endnote
    DataCite
    NLM
    DC