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Main Authors: Schutte, Willem D., Pretorius, Charl, Smit, Neill, van der Merwe, Leandra, Maxwell, Robert
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2602.19663
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author Schutte, Willem D.
Pretorius, Charl
Smit, Neill
van der Merwe, Leandra
Maxwell, Robert
author_facet Schutte, Willem D.
Pretorius, Charl
Smit, Neill
van der Merwe, Leandra
Maxwell, Robert
contents In this paper, we study how class imbalance, typical of low-default credit portfolios, affects the performance of logistic regression models. Using a simulation study with controlled data-generating mechanisms, we vary (i) the level of class imbalance and (ii) the strength of association between the predictors and the response. The results show that, for a given strength of association, achievable classification accuracy deteriorates markedly as the event rate decreases, and the optimal classification cut-off shifts with the level of imbalance. In contrast, the Gini coefficient is comparatively stable with respect to class imbalance once sample sizes are sufficiently large, even when classification accuracy is strongly affected. As a practical guideline, we summarise attainable classification performance as a function of the event rate and strength of association between the predictors and the response.
format Preprint
id arxiv_https___arxiv_org_abs_2602_19663
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle The impact of class imbalance in logistic regression models for low-default portfolios in credit risk
Schutte, Willem D.
Pretorius, Charl
Smit, Neill
van der Merwe, Leandra
Maxwell, Robert
Risk Management
Computation
In this paper, we study how class imbalance, typical of low-default credit portfolios, affects the performance of logistic regression models. Using a simulation study with controlled data-generating mechanisms, we vary (i) the level of class imbalance and (ii) the strength of association between the predictors and the response. The results show that, for a given strength of association, achievable classification accuracy deteriorates markedly as the event rate decreases, and the optimal classification cut-off shifts with the level of imbalance. In contrast, the Gini coefficient is comparatively stable with respect to class imbalance once sample sizes are sufficiently large, even when classification accuracy is strongly affected. As a practical guideline, we summarise attainable classification performance as a function of the event rate and strength of association between the predictors and the response.
title The impact of class imbalance in logistic regression models for low-default portfolios in credit risk
topic Risk Management
Computation
url https://arxiv.org/abs/2602.19663