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A comparison of neural networks and linear scoring models in the credit union environment

机译:信用合作社环境中神经网络和线性评分模型的比较

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The purpose of the present paper is to explore the ability of neural networks such as multilayer perceptrons and modular neural networks, and traditional techniques such as linear discriminant analysis and logistic regression, in building credit scoring models in the credit union environment. Also, since funding and small sample size often preclude the use of customized credit scoring models at small credit unions, we investigate the performance of generic models and compare them with customized models. Our results indicate that customized neural networks offer a very promising avenue if the measure of performance is percentage of bad loans correctly classified. However, if the measure of performance is percentage of good and bad loans correctly classified, logistic regression models are comparable to the neural networks approach. The performance of generic models was not as good as the customized models, particularly when it came to correctly classifying bad loans. Although we found significant differences in the results for the three credit unions, our modular neural network could not accommodate these differences, indicating that more innovative architectures might be necessary for building effective generic models.
机译:本文的目的是在建立信用合作社环境中的信用评分模型时,探索多层感知器和模块化神经网络等神经网络以及线性判别分析和逻辑回归等传统技术的能力。此外,由于资金和样本量较小,通常会阻止小型信用合作社使用自定义信用评分模型,因此我们研究了通用模型的性能,并将其与自定义模型进行比较。我们的结果表明,如果绩效指标是正确分类的不良贷款的百分比,则定制的神经网络将提供非常有希望的途径。但是,如果绩效衡量标准是正确分类的不良贷款和不良贷款的百分比,则逻辑回归模型可与神经网络方法相媲美。通用模型的性能不如定制模型,特别是在正确分类不良贷款时。尽管我们发现三个信用合作社的结果存在显着差异,但我们的模块化神经网络无法容纳这些差异,这表明可能需要更多创新的体系结构才能构建有效的通用模型。

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