A systematic credit scoring model based on heterogeneous classifier ensembles

M. Ala’raj, M. Abbod
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引用次数: 11

Abstract

Lending loans to borrowers is considered one of the main profit sources for banks and financial institutions. Thus, careful assessment and evaluation should be taken when deciding to grant credit to potential borrowers. With the rapid growth of credit industry and the massive volume of financial data, developing effective credit scoring models is very crucial. The literature in this area is very dense with models that aim to get the best predictive performance. Recent studies stressed on using ensemble models or multiple classifiers over single ones to solve credit scoring problems. Therefore, this study propose to develop and introduce a systematic credit scoring model based on homogenous and heterogeneous classifier ensembles based on three state-of-the art classifiers: logistic regression (LR), artificial neural network (ANN) and support vector machines (SVM). Results revealed that heterogeneous classifier ensembles gives better predictive performance than homogenous and single classifiers in terms of average accuracy.
基于异构分类器集成的系统信用评分模型
向借款人发放贷款被认为是银行和金融机构的主要利润来源之一。因此,在决定向潜在借款人提供信贷时,应进行仔细的评估和评价。随着信用行业的快速发展和海量的金融数据,开发有效的信用评分模型至关重要。该领域的文献中有大量旨在获得最佳预测性能的模型。最近的研究强调使用集成模型或多分类器而不是单一分类器来解决信用评分问题。因此,本研究建议基于三种最先进的分类器:逻辑回归(LR)、人工神经网络(ANN)和支持向量机(SVM),开发并引入基于同质和异质分类器集成的系统信用评分模型。结果表明,在平均准确率方面,异构分类器集成比同质分类器和单一分类器具有更好的预测性能。
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