Evaluating the creditworthiness of borrowers stands as one of the most consequential responsibilities undertaken by financial institutions. Conventional evaluation frameworks, built on manual scrutiny and a narrow band of financial indicators, struggle to keep pace with the volume and complexity of modern lending demands. This paper investigates the application of predictive analytics as a rigorous, data-driven alternative for credit risk quantification. Drawing on machine learning methodologies — including logistic regression, ensemble methods, and neural architectures — the study demonstrates how large, heterogeneous datasets can be mined to forecast borrower default probability with measurable precision. The paper further examines the data ecosystem underpinning such models, the operational workflow from raw data ingestion to live deployment, and the tangible gains in decision speed and portfolio quality that institutions have realised. Alongside these benefits, the paper candidly addresses structural obstacles such as training-data bias, model opacity, and regulatory compliance with data-privacy mandates. Evidence drawn from contemporary banking, fintech, and non-banking financial company deployments validates the claim that well-governed predictive systems can simultaneously reduce credit losses and broaden access to finance for underserved segments.
Chowdary et al. (Thu,) studied this question.