Participatory Approaches in AI Development and Governance: Case Studies
Journal:
arXiv
Published Date:
Jun 3, 2024
Abstract
This paper forms the second of a two-part series on the value of a
participatory approach to AI development and deployment. The first paper had
crafted a principled, as well as pragmatic, justification for deploying
participatory methods in these two exercises (that is, development and
deployment of AI). The pragmatic justification is that it improves the quality
of the overall algorithm by providing more granular and minute information. The
more principled justification is that it offers a voice to those who are going
to be affected by the deployment of the algorithm, and through engagement
attempts to build trust and buy-in for an AI system. By a participatory
approach, we mean including various stakeholders (defined a certain way) in the
actual decision making process through the life cycle of an AI system. Despite
the justifications offered above, actual implementation depends crucially on
how stakeholders in the entire process are identified, what information is
elicited from them, and how it is incorporated. This paper will test these
preliminary conclusions in two sectors, the use of facial recognition
technology in the upkeep of law and order and the use of large language models
in the healthcare sector. These sectors have been chosen for two primary
reasons. Since Facial Recognition Technologies are a branch of AI solutions
that are well-researched and the impact of which is well documented, it
provides an established space to illustrate the various aspects of adapting PAI
to an existing domain, especially one that has been quite contentious in the
recent past. LLMs in healthcare provide a canvas for a relatively less explored
space, and helps us illustrate how one could possibly envision enshrining the
principles of PAI for a relatively new technology, in a space where innovation
must always align with patient welfare.