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Genetic programming for credit scoring: The case of Egyptian public sector banks

机译:信用评分的遗传程序设计:埃及公共部门银行的案例

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Credit scoring has been widely investigated in the area of finance, in general, and banking sectors, in particular. Recently, generic programming (GP) has attracted attention in both academic and empirical fields, especially for credit problems. The primary aim of this paper is to investigate the ability of GP, which was proposed as an extension of genetic algorithms and was inspired by the Darwinian evolution theory, in the analysis of credit scoring models in Egyptian public sector banks. The secondary aim is to compare GP with probit analysis (PA), a successful alternative to logistic regression, and weight of evidence (WOE) measure, the later a neglected technique in published research. Two evaluation criteria are used in this paper, namely, average correct classification (ACC) rate criterion and estimated misclassification cost (EMC) criterion with different misclassification cost (MC) ratios, in order to evaluate the capabilities of the credit scoring models. Results so far revealed that GP has the highest ACC rate and the lowest EMC. However, surprisingly, there is a clear rule for the WOE measure under EMC with higher MC ratios. In addition, an analysis of the dataset using Kohonen maps is undertaken to provide additional visual insights into cluster groupings.
机译:信用评分已在一般金融领域,尤其是银行部门中被广泛研究。最近,通用编程(GP)在学术和经验领域都引起了关注,特别是在信用问题上。本文的主要目的是研究GP的能力,该能力被提议作为遗传算法的扩展,并受到达尔文进化理论的启发,用于分析埃及公共部门银行的信用评分模型。次要目标是将GP与Probit Analysis(PA)(一种成功的逻辑回归替代方法)和证据权重(WOE)度量(后来在已发表的研究中被忽略的技术)进行比较。本文使用两种评估标准,即平均正确分类(ACC)比率标准和具有不同错误分类成本(MC)比率的估计错误分类成本(EMC)标准,以评估信用评分模型的功能。迄今为止的结果表明,GP具有最高的ACC率和最低的EMC。但是,令人惊讶的是,对于具有较高MC比率的EMC,WOE度量有一个明确的规则。此外,还使用Kohonen映射对数据集进行了分析,以提供对聚类分组的其他可视化见解。

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