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arxiv: 2502.05961 · v3 · pith:P4EXRL6R · submitted 2025-02-09 · cs.CY

The Human Labour of Data Work: Capturing Cultural Diversity through World Wide Dishes

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classification cs.CY
keywords participatorybuildingcommunitydatasetdatadisheslabourapproach
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This paper provides guidance for building and maintaining infrastructure for participatory AI efforts by sharing reflections on building World Wide Dishes (WWD), a bottom-up, community-led image and text dataset of culinary dishes and associated cultural customs. We present WWD as an example of participatory dataset creation, where community members both guide the design of the research process and contribute to the crowdsourced dataset. This approach incorporates localised expertise and knowledge to address the limitations of web-scraped Internet datasets acknowledged in the Participatory AI discourse. We show that our approach can result in curated, high-quality data that supports decentralised contributions from communities that do not typically contribute to datasets due to a variety of systemic factors. Our project demonstrates the importance of participatory mediators in supporting community engagement by identifying the kinds of labour they performed to make WWD possible. We surface three dimensions of labour performed by participatory mediators that are crucial for participatory dataset construction: building trust with community members, making participation accessible, and contextualising community values to support meaningful data collection. Drawing on our findings, we put forth five lessons for building infrastructure to support future participatory AI efforts.

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Cited by 2 Pith papers

Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. Evaluating AI-Generated Images of Cultural Artifacts with Community-Informed Rubrics

    cs.CY 2026-04 unverdicted novelty 6.0

    Community members from the UK blind community, Kerala, and Tamil Nadu helped define what counts as culturally appropriate depictions of artifacts, and the authors tested whether those definitions can be turned into re...

  2. Evaluating AI-Generated Images of Cultural Artifacts with Community-Informed Rubrics

    cs.CY 2026-04 unverdicted novelty 5.0

    Case studies with blind UK residents and people from Kerala and Tamil Nadu demonstrate that community input at the systematization stage produces culturally grounded definitions of appropriateness for text-to-image mo...