Discussing ethical considerations and solutions for ensuring fairness in AI-driven financial services
1 Zenith General Insurance Company Limited, Nigeria.
2 Independent Researcher, UK.
3 Zenith Pensions Custodian Ltd, Nigeria.
4 Nigeria Inter-bank Settlement System Plc (NIBSS).
5 International Association of Computer Analysts and Researchers, Abuja, Nigeria.
6 One Advanced, UK.
Research Article
International Journal of Frontline Research in Multidisciplinary Studies, 2024, 03(02), 001–009.
Article DOI: 10.56355/ijfrms.2024.3.2.0024
Publication history:
Received on 08 July 2024; revised on 20 August 2024; accepted on 22 August 2024
Abstract:
This review paper examines the ethical considerations and proposes solutions for ensuring fairness in AI-driven financial services. Artificial intelligence (AI) technologies are increasingly integrated into financial systems, offering benefits such as enhanced efficiency and personalized services. However, the deployment of AI in financial services raises ethical concerns related to bias and discrimination, transparency and accountability, privacy rights, and algorithmic fairness. Biases inherent in training data can lead to discriminatory outcomes, while opaque decision-making processes challenge transparency and accountability. Privacy concerns arise from extensive data collection, necessitating robust data protection measures. Achieving algorithmic fairness presents complex challenges, requiring strategies to mitigate biases and ensure equitable outcomes. To address these challenges, this paper proposes several solutions. Algorithmic audits and transparency measures are essential to detect and rectify biases in AI systems. Inclusive data practices promote the use of representative datasets, mitigating biases and enhancing fairness. Regulatory frameworks play a crucial role in setting ethical standards and enforcing compliance. Ethical AI design principles guide the development of responsible AI systems that prioritize fairness and transparency. Stakeholder collaboration fosters industry-wide consensus and accountability. Future research should focus on advanced bias detection techniques, explainable AI (XAI) for transparency, comprehensive ethical frameworks tailored for AI governance, impact assessments, interdisciplinary collaboration, and consumer education. By advancing these areas, stakeholders can build a more equitable and trustworthy AI ecosystem in financial services, enhancing public trust and promoting responsible AI adoption.
Keywords:
AI-driven financial services; Ethical considerations; Fairness; bias detection; Transparency; Regulatory frameworks
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Copyright information:
Copyright © 2024 Author(s) retain the copyright of this article. This article is published under the terms of the Creative Commons Attribution Liscense 4.0