Author
Listed:
- Jacopo Giacomelli
(SACE S.p.A., Piazza Poli 42, 00187 Rome, Italy
Department of Statistics, Sapienza University of Rome, Viale Regina Elena 295, 00161 Rome, Italy
The views and opinions expressed in this article are those of the author and do not necessarily reflect the official policy or position of SACE S.p.A.)
Abstract
This study aims to combine deep and recurrent neural networks with a reduced-form portfolio model to predict future default rates across economic sectors. The industry-specific forecasts for Italian default rates produced with the proposed approach demonstrate its effectiveness, achieving significant levels of explained variance. The results obtained show that enhancing a reduced-form model by integrating it with neural networks is possible and practical for multivariate forecasting of future default frequencies. In our analysis, we utilize the recently proposed RecessionRisk + , a reduced-form latent-factor model developed for default and recession risk management applications as an improvement of the well-known CreditRisk + model. The model has been empirically verified to exhibit some predictive power concerning future default rates. However, the theoretical framework underlying the model does not provide the elements necessary to define a proper estimator for forecasting the target default rates, leaving space for the application of a neural network framework to retrieve the latent information useful for default rate forecasting purposes. Among the neural network models tested in combination with RecessionRisk + , the best results are obtained with shallow LSTM networks.
Suggested Citation
Jacopo Giacomelli, 2025.
"AI-Powered Reduced-Form Model for Default Rate Forecasting,"
Risks, MDPI, vol. 13(8), pages 1-20, August.
Handle:
RePEc:gam:jrisks:v:13:y:2025:i:8:p:151-:d:1723972
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