Journal of Risk
ISSN:
1465-1211 (print)
1755-2842 (online)
Editor-in-chief: Farid AitSahlia
The prediction of mortgage prepayment risks in the early stages of loan origination: a machine learning approach
Need to know
- Machine learning models using origination variables, such as loan-to-value ratios, credit scores and interest rates can predict mortgage prepayment risks at the loan origination stage, providing early warnings to enhance loan profitability.
- The origination interest rate, loan-to-value ratio and borrower credit scores emerged as pivotal predictors of prepayment behavior, with ensemble machine learning models demonstrating superior predictive performance.
- Significant differences in prepayment behavior were found across bank, non-bank and fintech lenders, emphasizing the necessity for lender-specific risk assessment strategies to manage risks effectively.
- The study underscores the critical role of origination variables in prepayment predictions, offering financial institutions a tailored and more nuanced approach to risk management based on lender type.
Abstract
This study presents a machine learning model to predict mortgage prepayment risks at the loan origination phase, leveraging variables such as loan-to-value ratios, credit scores and interest rates. The model diverges from traditional postorigination analyses, providing early predictions that are essential for enhancing loan profitability. Our findings reveal that the original interest rate, loan-to-value ratio and borrower credit score are pivotal predictors of prepayment behavior. We also find significant differences in prepayment behavior across bank, nonbank and fintech lenders, emphasizing the need for lender-specific risk assessment strategies. The study demonstrates the importance of origination variables in prepayment predictions, offering financial institutions a tailored approach to risk management.
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