Machine Learning for Credit Scoring: Improving Logistic Regression with Non Linear Decision Tree Effects

Fiche du document

Date

2022

Type de document
Périmètre
Langue
Identifiants
Relations

Ce document est lié à :
info:eu-repo/semantics/altIdentifier/doi/10.1016/j.ejor.2021.06.053

Collection

Archives ouvertes

Licence

info:eu-repo/semantics/OpenAccess



Sujets proches En

Borrowing

Citer ce document

Elena Ivona Dumitrescu et al., « Machine Learning for Credit Scoring: Improving Logistic Regression with Non Linear Decision Tree Effects », HAL-SHS : économie et finance, ID : 10.1016/j.ejor.2021.06.053


Métriques


Partage / Export

Résumé 0

In the context of credit scoring, ensemble methods based on decision trees, such as the random forest method, provide better classification performance than standard logistic regression models. However, logistic regression remains the benchmark in the credit risk industry mainly because the lack of interpretability of ensemble methods is incompatible with the requirements of financial regulators. In this paper, we propose a high-performance and interpretable credit scoring method called penalised logistic tree regression (PLTR), which uses information from decision trees to improve the performance of logistic regression. Formally, rules extracted from various short-depth decision trees built with original predictive variables are used as predictors in a penalised logistic regression model. PLTR allows us to capture non-linear effects that can arise in credit scoring data while preserving the intrinsic interpretability of the logistic regression model. Monte Carlo simulations and empirical applications using four real credit default datasets show that PLTR predicts credit risk significantly more accurately than logistic regression and compares competitively to the random forest method

document thumbnail

Par les mêmes auteurs

Sur les mêmes sujets

Sur les mêmes disciplines

Exporter en