English

Exploring different subtypes of recurrent event Cox-regression models in modelling lifetime default risk: A tutorial

Risk Management 2026-01-29 v3 Statistical Finance Applications

Abstract

In the pursuit of modelling a loan's probability of default (PD) over its lifetime, repeat default events are often ignored when using Cox Proportional Hazard (PH) models. Excluding such events may produce biased and inaccurate PD-estimates, which can compromise financial buffers against future losses. Accordingly, we investigate a few subtypes of Cox-models that can incorporate recurrent default events. We explore both the Andersen-Gill (AG) and the Prentice-Williams-Peterson (PWP) spell-time models using real-world data as an illustration. These models are compared against a baseline that deliberately ignores recurrent events, called the time to first default (TFD) model. Our models are evaluated using Harrell's c-statistic, adjusted Cox-Sell residuals, and a novel extension of time-dependent receiver operating characteristic analysis. From these Cox-models, we demonstrate how to derive a portfolio-level term-structure of default risk, which is a series of marginal PD-estimates over the average loan's lifetime. While the TFD- and PWP-models do not differ significantly across all diagnostics, the AG-model underperformed expectations. We believe that our pedagogical tutorial, as accompanied by a codebase, would be of great value to practitioner and regulator alike. Accordingly, our work enhances the current practice of using Cox-modelling in producing timeous and accurate PD-estimates under IFRS 9.

Keywords

Cite

@article{arxiv.2505.01044,
  title  = {Exploring different subtypes of recurrent event Cox-regression models in modelling lifetime default risk: A tutorial},
  author = {Arno Botha and Tanja Verster and Bernard Scheepers},
  journal= {arXiv preprint arXiv:2505.01044},
  year   = {2026}
}

Comments

9162 words, 23 pages (excluding appendix), 11 figures

R2 v1 2026-06-28T23:18:52.681Z