Exploring the Landscape of Fairness Interventions in Software Engineering
By: Sadia Afrin Mim
Potential Business Impact:
Makes AI fair, avoiding bad decisions.
Current developments in AI made it broadly significant for reducing human labor and expenses across several essential domains, including healthcare and finance. However, the application of AI in the actual world poses multiple risks and disadvantages due to potential risk factors in data (e.g., biased dataset). Practitioners developed a number of fairness interventions for addressing these kinds of problems. The paper acts as a survey, summarizing the various studies and approaches that have been developed to address fairness issues
Similar Papers
Practitioner Insights on Fairness Requirements in the AI Development Life Cycle: An Interview Study
Software Engineering
Helps make AI fair for everyone.
A Systematic Mapping on Software Fairness: Focus, Trends and Industrial Context
Software Engineering
Helps make computer programs fairer for everyone.
A Gray Literature Study on Fairness Requirements in AI-enabled Software Engineering
Software Engineering
Makes AI fair, not just smart.