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Improving the management of microfinance institutions by using credit scoring models based on Statistical Learning techniques

机译:通过使用基于统计学习技术的信用评分模型来改善小额信贷机构的管理

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A wide range of supervised classification algorithms have been successfully applied for credit scoring in non-microfinance environments according to recent literature. However, credit scoring in the microfinance industry is a relatively recent application, and current research is based, to the best of our knowledge, on classical statistical methods. This lack is surprising since the implementation of credit scoring based on supervised classification algorithms should contribute towards the efficiency of microfinance institutions, thereby improving their competitiveness in an increasingly constrained environment. This paper explores an extensive list of Statistical Learning techniques as microfinance credit scoring tools from an empirical viewpoint. A data set of microcredits belonging to a Peruvian Microfinance Institution is considered, and the following models are applied to decide between default and non-default credits: linear and quadratic discriminant analysis, logistic regression, multilayer perceptron. support vector machines, classification trees, and ensemble methods based on bagging and boosting algorithm. The obtained results suggest the use of a multilayer perceptron trained in the R statistical system with a second order algorithm. Moreover, our findings show that, with the implementation of this MLP-based model, the MFIs misclassification costs could be reduced to 13.7% with respect to the application of other classic models.
机译:根据最新文献,各种各样的监督分类算法已成功地应用于非小额信贷环境中的信用评分。但是,小额信贷行业中的信用评分是一个相对较新的应用,据我们所知,当前的研究是基于经典统计方法的。这种不足令人惊讶,因为基于监督分类算法的信用评分的实施应有助于小额信贷机构的效率,从而在日益受到限制的环境中提高其竞争力。本文从经验的角度探讨了统计学习技术的广泛清单,这些技术是小额信贷信用评分工具。考虑了属于秘鲁小额信贷机构的小额信贷数据集,并使用以下模型确定违约信用和非违约信用:线性和二次判别分析,逻辑回归,多层感知器。支持基于装袋和提升算法的矢量机,分类树和集成方法。获得的结果表明,在具有二阶算法的R统计系统中训练的多层感知器的使用。此外,我们的研究结果表明,通过实施基于MLP的模型,与其他经典模型的应用相比,MFI的误分类成本可以降低到13.7%。

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