Envisioning Communities: A Participatory Approach Towards AI for Social
Good
- URL: http://arxiv.org/abs/2105.01774v1
- Date: Tue, 4 May 2021 21:40:04 GMT
- Title: Envisioning Communities: A Participatory Approach Towards AI for Social
Good
- Authors: Elizabeth Bondi, Lily Xu, Diana Acosta-Navas, and Jackson A. Killian
- Abstract summary: We argue that AI for social good ought to be assessed by the communities that the AI system will impact.
We show how the capabilities approach aligns with a participatory approach for the design and implementation of AI for social good research.
- Score: 10.504838259488844
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Research in artificial intelligence (AI) for social good presupposes some
definition of social good, but potential definitions have been seldom suggested
and never agreed upon. The normative question of what AI for social good
research should be "for" is not thoughtfully elaborated, or is frequently
addressed with a utilitarian outlook that prioritizes the needs of the majority
over those who have been historically marginalized, brushing aside realities of
injustice and inequity. We argue that AI for social good ought to be assessed
by the communities that the AI system will impact, using as a guide the
capabilities approach, a framework to measure the ability of different policies
to improve human welfare equity. Furthermore, we lay out how AI research has
the potential to catalyze social progress by expanding and equalizing
capabilities. We show how the capabilities approach aligns with a participatory
approach for the design and implementation of AI for social good research in a
framework we introduce called PACT, in which community members affected should
be brought in as partners and their input prioritized throughout the project.
We conclude by providing an incomplete set of guiding questions for carrying
out such participatory AI research in a way that elicits and respects a
community's own definition of social good.
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