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Deriving the term-structure of loan write-off risk under IFRS 9 by using survival analysis: A benchmark study

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  • Arno Botha
  • Mohammed Gabru
  • Marcel Muller
  • Janette Larney

Abstract

The estimation of marginal loan write-off probabilities is a non-trivial task when modelling the loss given default (LGD) risk parameter in credit risk. We explore two types of survival models in estimating the overall write-off probability over default spell time, where these probabilities form the term-structure of write-off risk in aggregate. These survival models include a discrete-time hazard (DtH) model and a conditional inference survival tree. Both models are compared to a cross-sectional logistic regression model for write-off risk. All of these (first-stage) models are then ensconced in a broader two-stage LGD-modelling approach, wherein a loss severity model is estimated in the second stage. In expanding the model suite, a novel dichotomisation step is introduced for collapsing the write-off probability into a 0/1-value, prior to LGD-calculation. A benchmark study is subsequently conducted amongst the resulting LGD-models. We find that the DtH-model outperforms other two-stage LGD-models admirably across most diagnostics. However, a single-stage LGD-model still had the best results, likely due to the peculiar `L-shaped' LGD-distribution in our data. Ultimately, we believe that our tutorial-style work can enhance LGD-modelling practices when estimating the expected credit loss under IFRS 9.

Suggested Citation

  • Arno Botha & Mohammed Gabru & Marcel Muller & Janette Larney, 2026. "Deriving the term-structure of loan write-off risk under IFRS 9 by using survival analysis: A benchmark study," Papers 2603.11897, arXiv.org.
  • Handle: RePEc:arx:papers:2603.11897
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    References listed on IDEAS

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