Social Inclusion in Curated Contexts: Insights from Museum Practices
Han-Yin Huang, Cynthia C. S. Liem

TL;DR
This paper explores how museum practices promoting diversity and community engagement can inform the development of more socially inclusive AI systems, emphasizing cultural humility, contextual interpretation, and community participation.
Contribution
It introduces three principles from museum practices—cultural humility, contextual interpretation, and community participation—to guide socially inclusive AI development.
Findings
Museum principles can improve AI inclusivity
Practicing cultural humility addresses biases
Community involvement enhances relevance
Abstract
Artificial intelligence literature suggests that minority and fragile communities in society can be negatively impacted by machine learning algorithms due to inherent biases in the design process, which lead to socially exclusive decisions and policies. Faced with similar challenges in dealing with an increasingly diversified audience, the museum sector has seen changes in theory and practice, particularly in the areas of representation and meaning-making. While rarity and grandeur used to be at the centre stage of the early museum practices, folk life and museums' relationships with the diverse communities they serve become a widely integrated part of the contemporary practices. These changes address issues of diversity and accessibility in order to offer more socially inclusive services. Drawing on these changes and reflecting back on the AI world, we argue that the museum experience…
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Taxonomy
MethodsAttentive Walk-Aggregating Graph Neural Network
