The Pursuit of Fairness in Artificial Intelligence Models: A Survey
Tahsin Alamgir Kheya, Mohamed Reda Bouadjenek, Sunil Aryal

TL;DR
This survey reviews the definitions, types, and mitigation strategies of bias in AI models, emphasizing ethical considerations and the impact of unfairness across various application domains.
Contribution
It provides a comprehensive taxonomy of bias types, summarizes existing fairness approaches, and discusses ethical implications in AI development and deployment.
Findings
Categorizes different types of bias in AI systems
Summarizes techniques for bias mitigation
Highlights ethical considerations and impact on user experience
Abstract
Artificial Intelligence (AI) models are now being utilized in all facets of our lives such as healthcare, education and employment. Since they are used in numerous sensitive environments and make decisions that can be life altering, potential biased outcomes are a pressing matter. Developers should ensure that such models don't manifest any unexpected discriminatory practices like partiality for certain genders, ethnicities or disabled people. With the ubiquitous dissemination of AI systems, researchers and practitioners are becoming more aware of unfair models and are bound to mitigate bias in them. Significant research has been conducted in addressing such issues to ensure models don't intentionally or unintentionally perpetuate bias. This survey offers a synopsis of the different ways researchers have promoted fairness in AI systems. We explore the different definitions of fairness…
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Taxonomy
TopicsEthics and Social Impacts of AI
MethodsAttentive Walk-Aggregating Graph Neural Network
