46 GenAI in Banking & Finance: Fairness Optimization Techniques in Financial AI
Balancing Predictive Accuracy and Ethical Decision-Making 1. Introduction Artificial Intelligence is increasingly used in financial decision-making. Credit scoring models determine who receives loans, fraud detection models identify suspicious transactions, and risk models guide investment decisions. However, these models may unintentionally produce unfair outcomes for certain groups. A model may achieve high accuracy but still produce biased outcomes. For example: Overall model accuracy = 92% Approval rate for Group A = 60% Approval rate for Group B = 40% Even though the model predicts well, the outcome distribution raises concerns about fairness and discrimination . Fairness optimization techniques aim to reduce bias while maintaining predictive performance . In financial systems, this balance is critical because decisions affect credit access, economic opportunity, and regulatory compliance . 2. Understanding Fairness in Machine Learning Definition Fairness i...