A Spatio-Temporal Machine Learning Model for Mortgage Credit Risk: Default Probabilities and Loan Portfolios
- URL: http://arxiv.org/abs/2410.02846v1
- Date: Thu, 3 Oct 2024 15:10:55 GMT
- Title: A Spatio-Temporal Machine Learning Model for Mortgage Credit Risk: Default Probabilities and Loan Portfolios
- Authors: Pascal Kündig, Fabio Sigrist,
- Abstract summary: We introduce a machine learning model for credit risk by combining tree-boosting with a latent-temporal- Gaussian process model accounting for frailty correlation.
We find that both predictive default probabilities for individual predictive loan portfolio loss distributions are more accurate compared to conventional independent linear hazard models.
- Score: 11.141688859736805
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We introduce a novel machine learning model for credit risk by combining tree-boosting with a latent spatio-temporal Gaussian process model accounting for frailty correlation. This allows for modeling non-linearities and interactions among predictor variables in a flexible data-driven manner and for accounting for spatio-temporal variation that is not explained by observable predictor variables. We also show how estimation and prediction can be done in a computationally efficient manner. In an application to a large U.S. mortgage credit risk data set, we find that both predictive default probabilities for individual loans and predictive loan portfolio loss distributions obtained with our novel approach are more accurate compared to conventional independent linear hazard models and also linear spatio-temporal models. Using interpretability tools for machine learning models, we find that the likely reasons for this outperformance are strong interaction and non-linear effects in the predictor variables and the presence of large spatio-temporal frailty effects.
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