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Credit Risk Model Based on Central Bank Credit Registry Data

机译:基于中央银行信用登记册数据的信用风险模型

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Data science and machine-learning techniques help banks to optimize enterprise operations, enhance risk analyses and gain competitive advantage. There is a vast amount of research in credit risk, but to our knowledge, none of them uses credit registry as a data source to model the probability of default for individual clients. The goal of this paper is to evaluate different machine-learning models to create accurate model for credit risk assessment using the data from the real credit registry dataset of the Central Bank of Republic of North Macedonia. We strongly believe that the model developed in this research will be an additional source of valuable information to commercial banks, by leveraging historical data for all the population of the country in all the commercial banks. Thus, in this research, we compare five machine-learning models to classify credit risk data, i.e., logistic regression, decision tree, random forest, support vector machines (SVM) and neural network. We evaluate the five models using different machine-learning metrics, and we propose a model based on credit registry data from the central bank with detailed methodology that can predict the credit risk based on credit history of the population in the country. Our results show that the best accuracy is achieved by using decision tree performing on imbalanced data with and without scaling, followed by random forest and linear regression.
机译:数据科学与机器学习技术帮助银行优化企业运营,增强风险分析并获得竞争优势。信用风险存在大量的研究,但对于我们的知识,它们都不使用信用注册表作为数据源来模拟各个客户端默认值的概率。本文的目标是评估不同的机器学习模型,以利用来自北马其顿共和国中央银行的真正信用登记数据集的数据来创建准确的信用风险评估模型。我们强烈认为,本研究中开发的模型将是商业银行的额外资料来源,通过利用所有商业银行的国家所有人的历史数据。因此,在本研究中,我们比较五种机器学习模型来分类信用风险数据,即逻辑回归,决策树,随机林,支持向量机(SVM)和神经网络。我们评估使用不同的机器学习指标的五种模型,我们提出了一种基于中央银行的信用登记数据的模型,详细方法可以根据国家人口信用史上预测信用风险。我们的结果表明,通过使用具有和不扩展的不平衡数据执行决策树来实现最佳精度,然后是随机林和线性回归。

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