ETHICAL AND RESPONSIBLE AI: CHALLENGES IN BIAS, FAIRNESS, AND TRANSPARENCY
Main Article Content
Abstract
As artificial intelligence (AI) systems become increasingly embedded in high-stakes decision-making processes across criminal justice, healthcare, finance, education, and employment, the ethical dimensions of their design and deployment have emerged as one of the defining challenges of our era. This research paper provides a comprehensive and systematic examination of the three central pillars of responsible AI: bias mitigation, algorithmic fairness, and transparency. Drawing on a mixed-methods research design comprising systematic literature review, quantitative benchmarking, expert survey data, and four in-depth case studies — including facial recognition disparities, predictive policing bias, biased hiring algorithms, and healthcare diagnostic inequity — this study demonstrates that algorithmic bias is pervasive, measurable, and remediable when addressed through structured technical, organisational, and regulatory interventions. Findings indicate that targeted bias mitigation techniques improve fairness scores by an average of 27 percentage points across high-risk application domains, while explainability frameworks substantially increase stakeholder trust and regulatory compliance. The paper critically evaluates the tensions between competing fairness criteria, the limitations of current transparency tools, and the governance gaps that impede responsible AI deployment at scale. A forward-looking framework integrating technical fairness tools, institutional accountability mechanisms, and international regulatory harmonisation is proposed to guide the responsible development of AI systems that are equitable, explainable, and deserving of public trust.