使用机器学习模型进行信用风险评估的分析方法

Marcos R. Machado, Daniel Tianfu Chen, Joerg R. Osterrieder
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引用次数: 0

摘要

本研究提出了一种新颖的预警系统,用于监测总部设在荷兰的一家大型国际银行商业客户的信用风险。传统的早期预警方法往往依赖于回溯性指标,如违约概率或违约损失,这可能会限制预测性能。为了解决这个问题,我们研究了基于观察列表的触发器预测财务困境和不利的客户迁移的有效性。我们评估其在不同客户状态转换中的准确性、及时性和敏感性。利用内部银行记录和外部财务信息的丰富数据集,我们实现并比较了几种机器学习算法,包括线性判别分析、逻辑回归、决策树、支持向量机、随机森林、梯度增强、极端梯度增强和人工神经网络。为了提高模型的透明度和支持采用,我们采用SHapley加性解释来解释风险的关键预测因子。在所有模型中,Random Forest达到了最高的性能,表现出较强的F1分数,优越的触发精度和对迁移的高灵敏度。它成功预测了12.7%的负面客户转移,并帮助防止了67.6%的可能导致银行财务损失的案例。本研究为前瞻性信用风险管理提供了一个数据驱动的、可解释的解决方案,并为商业银行的战略决策提供了可操作的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An analytical approach to credit risk assessment using machine learning models
This study presents a novel Early Warning System for monitoring the credit risk of commercial customers at a large international bank headquartered in the Netherlands. Traditional early warning methods often rely on backward-looking indicators such as probability of default or loss given default, which can limit predictive performance. To address this, we investigate the effectiveness of a Watchlist-based trigger for forecasting financial distress and adverse customer migration. We assess its precision, timeliness, and sensitivity across different client status transitions. Using a rich dataset combining internal banking records and external financial information, we implement and compare several machine learning algorithms, including Linear Discriminant Analysis, Logistic Regression, Decision Trees, Support Vector Machines, Random Forest, Gradient Boosting, Extreme Gradient Boosting, and Artificial Neural Networks. To enhance model transparency and support adoption, we employ SHapley Additive exPlanations to interpret key predictors of risk. Among all models, Random Forest achieves the highest performance, demonstrating strong F1 scores, superior trigger precision, and high sensitivity to migration. It successfully anticipates 12.7% of negative client transitions and helps prevent 67.6% of cases that would otherwise result in financial losses for the bank. This research contributes a data-driven, explainable solution for proactive credit risk management and offers actionable insights to support strategic decision-making in commercial banking.
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CiteScore
3.90
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