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      Position: Cracking the Code of Cascading Disparity Towards Marginalized Communities

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          Abstract

          The rise of foundation models holds immense promise for advancing AI, but this progress may amplify existing risks and inequalities, leaving marginalized communities behind. In this position paper, we discuss that disparities towards marginalized communities - performance, representation, privacy, robustness, interpretability and safety - are not isolated concerns but rather interconnected elements of a cascading disparity phenomenon. We contrast foundation models with traditional models and highlight the potential for exacerbated disparity against marginalized communities. Moreover, we emphasize the unique threat of cascading impacts in foundation models, where interconnected disparities can trigger long-lasting negative consequences, specifically to the people on the margin. We define marginalized communities within the machine learning context and explore the multifaceted nature of disparities. We analyze the sources of these disparities, tracing them from data creation, training and deployment procedures to highlight the complex technical and socio-technical landscape. To mitigate the pressing crisis, we conclude with a set of calls to action to mitigate disparity at its source.

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          Author and article information

          Journal
          03 June 2024
          Article
          2406.01757
          9d3bb04b-73ac-4e59-9a43-11b1748c714f

          http://creativecommons.org/licenses/by/4.0/

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          Custom metadata
          14 pages, 1 figure
          cs.LG cs.AI cs.CY

          Applied computer science,Artificial intelligence
          Applied computer science, Artificial intelligence

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