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Credit Risk Assessment Model Based Using Principal component Analysis And Artificial Neural Network

机译:基于主成分分析和人工神经网络的信用风险评估模型

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Credit risk assessment for bank customers has gained increasing attention in recent years. Several models for credit scoring have been proposed in the literature for this purpose. The accuracy of the model is crucial for any financial institution’s profitability. This paper provided a high accuracy credit scoring model that could be utilized with small and large datasets utilizing a principal component analysis (PCA) based breakdown to the significance of the attributes commonly used in the credit scoring models. The proposed credit scoring model applied PCA to acquire the main attributes of the credit scoring data then an ANN classifier to determine the credit worthiness of an individual applicant. The performance of the proposed model was compared to other models in terms of accuracy and training time. Results, based on German dataset showed that the proposed model is superior to others and computationally cheaper. Thus it can be a potential candidate for future credit scoring systems.Key words: Credit scoring / ANN / PCA / credit risk / German data
机译:近年来,针对银行客户的信用风险评估越来越受到关注。为此,文献中提出了几种信用评分模型。该模型的准确性对于任何金融机构的盈利能力都至关重要。本文提供了一种高精度信用评分模型,该模型可用于基于主成分分析(PCA)分解的大小数据集,从而了解信用评分模型中常用属性的重要性。拟议的信用评分模型应用PCA来获取信用评分数据的主要属性,然后使用ANN分类器来确定单个申请人的信用价值。在准确性和训练时间方面,将所提出模型的性能与其他模型进行了比较。基于德国数据集的结果表明,所提出的模型优于其他模型,并且计算成本较低。因此它可以成为未来信用评分系统的潜在候选者。关键词:信用评分/ ANN / PCA /信用风险/德国数据

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