AI for All: Operationalising Diversity and Inclusion Requirements for AI
Systems
- URL: http://arxiv.org/abs/2311.14695v1
- Date: Tue, 7 Nov 2023 23:15:03 GMT
- Title: AI for All: Operationalising Diversity and Inclusion Requirements for AI
Systems
- Authors: Muneera Bano, Didar Zowghi, Vincenzo Gervasi, Rifat Shams
- Abstract summary: This research aims to address the lack of research and practice on how to elicit and capture D&I requirements for AI systems.
We have proposed a tailored user story template to capture D&I requirements and conducted focus group exercises to use the themes and user story template in writing D&I requirements for two example AI systems.
- Score: 4.884533605897174
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: As Artificial Intelligence (AI) permeates many aspects of society, it brings
numerous advantages while at the same time raising ethical concerns and
potential risks, such as perpetuating inequalities through biased or
discriminatory decision-making. To develop AI systems that cater for the needs
of diverse users and uphold ethical values, it is essential to consider and
integrate diversity and inclusion (D&I) principles throughout AI development
and deployment. Requirements engineering (RE) is a fundamental process in
developing software systems by eliciting and specifying relevant needs from
diverse stakeholders. This research aims to address the lack of research and
practice on how to elicit and capture D&I requirements for AI systems. We have
conducted comprehensive data collection and synthesis from the literature
review to extract requirements themes related to D&I in AI. We have proposed a
tailored user story template to capture D&I requirements and conducted focus
group exercises to use the themes and user story template in writing D&I
requirements for two example AI systems. Additionally, we have investigated the
capability of our solution by generating synthetic D&I requirements captured in
user stories with the help of a Large Language Model.
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