Fairness in FinTech: Tackling AI Bias and Ethical Pitfalls
Published: 2026
Author(s) Name: Kirti Aggarwal, Vipin Mittal |
Author(s) Affiliation: Department of Management Studies, Vaish College of Engineering, Rohtak, Haryana, India.
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Abstract
To ensure equity in artificial intelligence (AI)-driven financial services, this paper looks at ethical issues and suggests solutions. Financial systems are progressively incorporating AI technologies, which provide advantages such as increased productivity and customised services. However, there are ethical questions about algorithmic fairness, privacy rights, transparency and accountability bias, discrimination, and the use of AI in financial services. Transparency and accountability are threatened by opaque decision-making processes and biases present in training data can produce discriminatory results. Large-scale data collection raises privacy issues. So, strong data protection measures are required. Algorithmic fairness is difficult to achieve and calls for methods to reduce biases and guarantee fair results. This paper offers a number of solutions to these problems. To identify and address biases in AI systems algorithmic audits and transparency initiatives are crucial. By encouraging the use of representative datasets inclusive data practices help reduce biases and improve equity. Setting moral guidelines and enforcing adherence are critical functions of regulatory frameworks. The creation of responsible AI systems that put justice and openness first is guided by ethical AI design principles. Collaboration among stakeholders promotes accountability and consensus across the industry.
Keywords: Fairness, Ethical Considerations, Regulatory Frameworks, AI-Driven Financial Services, Transparency, Bias Detection
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