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Selection of variables for credit risk data mining models: Preliminary research

机译:信用风险数据挖掘模型的变量选择:初步研究

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Credit risk is related to the risk of the borrower that the lender will not be able to return their debt including interest. Numerous researches have been conducted in the area of credit risk, both using classical models such as Altman Z-score and using machine learning methodology. However, the research using the data from Croatian financial institutions is scarce, especially research focused on the selection of the demographic and/or behavior variables. In addition, it is important to develop robust models that estimate credit risk as accurately as possible. The goal of this research is to develop a data mining model for prediction of credit risk, using the data from Croatian financial institutions on defaulted clients (demographic and behavior data). Decision tree models are constructed for the prediction of credit risk. Different algorithms for the variable selection are evaluated based on the classification accuracy of the decision trees developed based on the selected variables.
机译:信用风险与借款人的风险有关,即放款人将无法退还其债务(包括利息)。在信用风险领域已经进行了许多研究,既使用经典模型(例如Altman Z评分),也使用机器学习方法进行了研究。但是,很少使用克罗地亚金融机构的数据进行研究,尤其是侧重于人口统计和/或行为变量选择的研究。此外,开发可靠的模型以尽可能准确地评估信用风险也很重要。这项研究的目的是使用来自克罗地亚金融机构违约客户的数据(人口统计和行为数据),开发一种用于预测信用风险的数据挖掘模型。构建决策树模型以预测信用风险。基于基于所选变量开发的决策树的分类准确性,评估用于变量选择的不同算法。

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