一种新的银行信用风险分析机器学习方法

Zaynab Hjouji, M. M’hamdi
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引用次数: 0

摘要

我们在这篇文章中提出了一种预测借款人信誉的新方法,我们称之为“将学习集分成两个区域的方法”。这种方法的目标是从一个训练集中建立两个区域。因此,要预测借款人的偿付能力,只需确定两个区域中哪一个具有其特征向量;如果不对应任何区域,则需要进一步分析信用决策。为了测试我们的方法,使用了从UCI存储库获得的大量真实和最近的信用数据,我们还在摩洛哥银行的真实信用数据库上进行了训练,并使用两个绩效衡量指标(如分类准确性和ROC曲线的AUC)作为稳健性衡量标准来分析借款人的信誉。将该模型与LR、RBF-NN和MLP-NN三种传统的机器学习算法进行了比较。实验结果表明了该方法的优越性。
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A New Machine Learning Method for Bank Credit Risk Analysis
We present in this article a new approach to predict the creditworthiness of borrowers that we call “Method of separating the learning set into two regions”. The goal of this approach is to build two regions from a training set. Thus, to predict the solvency of borrowers, it suffices to identify which of the two regions has its characteristic vectors; if it does not correspond to any region, credit decision-making requires further analysis. To test our approach, a large set of real and recent credit data obtained from the UCI repository is used, we trained also on a real credit database of a Moroccan bank and the creditworthiness of borrowers is analyzed at using two performance measurement indicators such as classification accuracy and AUC of the ROC curve as a robustness measurement criterion. The proposed model was compared with three traditional machine learning algorithms: LR, RBF-NN and MLP-NN. The experimental results show the superiority of the proposed approach.
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