CYAISEMar 21, 2024

Navigating Fairness: Practitioners' Understanding, Challenges, and Strategies in AI/ML Development

arXiv:2403.15481v212 citationsh-index: 39Empir Softw Eng
Originality Synthesis-oriented
AI Analysis

It addresses the problem of ensuring fairness in AI/ML systems for practitioners and companies, offering incremental insights based on empirical data.

This study tackled the lack of empirical research on AI practitioners' perspectives by conducting interviews with 22 practitioners to understand their views on fairness, challenges, consequences, and strategies in AI/ML development, resulting in a framework that provides actionable insights to enhance fairness and reduce bias.

The rise in the use of AI/ML applications across industries has sparked more discussions about the fairness of AI/ML in recent times. While prior research on the fairness of AI/ML exists, there is a lack of empirical studies focused on understanding the perspectives and experiences of AI practitioners in developing a fair AI/ML system. Understanding AI practitioners' perspectives and experiences on the fairness of AI/ML systems are important because they are directly involved in its development and deployment and their insights can offer valuable real-world perspectives on the challenges associated with ensuring fairness in AI/ML systems. We conducted semi-structured interviews with 22 AI practitioners to investigate their understanding of what a 'fair AI/ML' is, the challenges they face in developing a fair AI/ML system, the consequences of developing an unfair AI/ML system, and the strategies they employ to ensure AI/ML system fairness. We developed a framework showcasing the relationship between AI practitioners' understanding of 'fair AI/ML' system and (i) their challenges in its development, (ii) the consequences of developing an unfair AI/ML system, and (iii) strategies used to ensure AI/ML system fairness. By exploring AI practitioners' perspectives and experiences, this study provides actionable insights to enhance AI/ML fairness, which may promote fairer systems, reduce bias, and foster public trust in AI technologies. Additionally, we also identify areas for further investigation and offer recommendations to aid AI practitioners and AI companies in navigating fairness.

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