首页> 外文期刊>Annals of Operations Research >Default avoidance on credit card portfolios using accounting, demographical and exploratory factors: decision making based on machine learning (ML) techniques
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Default avoidance on credit card portfolios using accounting, demographical and exploratory factors: decision making based on machine learning (ML) techniques

机译:使用会计,人口统计和探索因素的信用卡投资组合违约:基于机器学习(ML)技术的决策

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Effective and thorough credit-risk management is a key factor for lending institutions, as significant financial losses can arise from the borrowers' default. Consequently, machine learning methods can measure and analyze credit risk objectively when at the same time they face increasingly attention. This study analyzes default payment data from a credit cards' portfolio containing some 30,000 clients from Taiwan with twenty-three attributes and with no missing information. We compare prediction accuracy of seven classification methods used, i.e. KNN, Logistic Regression, Naive Bayes, Decision Trees, Random Forest, SVC, and Linear SVC. The results indicate that only few out of most of the typical variables used can adequately analyze default characteristics in terms of lending decisions. The results provide effective feedback to credit evaluators, lending institutions and business analysts for in-depth analysis. Also, they mention to the importance of the precautionary borrowing techniques to be used to better understand credit-card borrowers' behavior, along with specific accounting, historical and demographical characteristics.
机译:有效和彻底的信贷风险管理是贷款机构的关键因素,因为借款人的违约可能会产生重大的财务损失。因此,机器学习方法可以客观地测量和分析信用风险,同时他们面临越来越关注。本研究分析了信用卡投资组合的默认支付数据,其中包含来自台湾的大约30,000个客户,其中有二十三个属性,没有缺少的信息。我们比较使用的七种分类方法的预测准确性,即KNN,Logistic回归,天真贝叶斯,决策树,随机林,SVC和线性SVC。结果表明,使用的大部分典型变量中只有很少的典型变量可以充分分析贷款决策方面的默认特征。结果为信贷评估员,贷款机构和业务分析师提供了有效的反馈,以进行深入分析。此外,他们提到了预防性借贷技术的重要性,以更好地了解信用卡借款人的行为以及特定的会计,历史和人口统计特征。

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