Application of Business Intelligence in Decision Making for Credit Card Approval

Pub Date : 2023-02-23 DOI:10.37380/jisib.v12i2.956
Admel Husejinovic, Nermina Durmic, Samed Jukic
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Abstract

This paper aims to show how business intelligence can be applied in the credit card approval process. More specifically, the paper investigates how information like an applicant’s age, credit score, debt, income, and prior default can be used in credit card approval prediction.The dataset used for analysis is a publicly available dataset from the UCI machine learning repository. Logistic regression is used to make a prediction model with a reasonable number of attributes for a comprehensible business model. The Chi-square test of independence is used to test the dependence of credit card approval results with attributes. Research uncovers that prior default is supposed to be the most important attribute in the approval process. Finally, the authors propose several visualizations that could help make smarter decisions with effective credit risk assessment.
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商业智能在信用卡审批决策中的应用
本文旨在展示商业智能如何应用于信用卡审批过程。更具体地说,本文研究了申请人的年龄、信用评分、债务、收入和先前违约等信息如何用于信用卡审批预测。用于分析的数据集是来自UCI机器学习库的公开可用数据集。逻辑回归用于为可理解的商业模型建立具有合理数量属性的预测模型。独立性卡方检验用于检验信用卡审批结果与属性的相关性。研究发现,事先违约被认为是审批过程中最重要的属性。最后,作者提出了一些可视化方法,可以通过有效的信用风险评估帮助做出更明智的决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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