Bias in AI Decision‑Making: Ethical Implications for Hiring and Healthcare Algorithms
DOI:
https://doi.org/10.58840/ke81n154Keywords:
Algorithmic Bias, Ethical AI, Fairness In Machine Learning, AI In Hiring Practices, Healthcare Algorithms, Discrimination In Automated Decision-Making.Abstract
Artificial Intelligence (AI) has revolutionized decision-making in critical sectors such as hiring and healthcare. While AI promises enhanced efficiency, scalability, and data-driven objectivity, emerging evidence shows that these systems can inherit and even amplify societal biases, leading to unfair outcomes. This article explores the ethical implications of AI-driven bias in hiring and healthcare algorithms. It examines the sources of bias, the consequences of algorithmic discrimination, and the regulatory and ethical frameworks needed to ensure transparency, accountability, and equity. Case studies illustrate real-world impacts, and policy recommendations are provided for developers, organizations, and regulators seeking to create responsible AI systems.




