Transfer Learning for Loan Recovery Prediction under Distribution Shifts with Heterogeneous Feature Spaces
Christopher Gerling, Hanqiu Peng, Ying Chen, Stefan Lessmann

TL;DR
This paper introduces a transfer learning model using a mixture-density Transformer architecture to improve loan recovery rate forecasting across heterogeneous datasets, especially when target data is scarce.
Contribution
It presents FT-MDN-Transformer, a novel architecture designed for transfer learning in heterogeneous feature spaces, capable of producing both point estimates and predictive distributions.
Findings
Outperforms baseline models with limited target data.
Excels under covariate and conditional shifts.
Provides probabilistic forecasts closely matching empirical distributions.
Abstract
Accurate forecasting of recovery rates (RR) is central to credit risk management and regulatory capital determination. In many loan portfolios, however, RR modeling is constrained by data scarcity arising from infrequent default events. Transfer learning (TL) offers a promising avenue to mitigate this challenge by exploiting information from related but richer source domains, yet its effectiveness critically depends on the presence and strength of distributional shifts, and on potential heterogeneity between source and target feature spaces. This paper introduces FT-MDN-Transformer, a mixture-density tabular Transformer architecture specifically designed for TL in RR forecasting across heterogeneous feature sets. The model produces both loan-level point estimates and portfolio-level predictive distributions, thereby supporting a wide range of practical RR forecasting applications. We…
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