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Statistical and machine learning models in credit scoring: A systematic literature survey

机译:信用评分中的统计和机器学习模型:系统文学调查

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摘要

In practice, as a well-known statistical method, the logistic regression model is used to evaluate the credit-worthiness of borrowers due to its simplicity and transparency in predictions. However, in literature, sophisticated machine learning models can be found that can replace the logistic regression model. Despite the advances and applications of machine learning models in credit scoring, there are still two major issues: the incapability of some of the machine learning models to explain predictions; and the issue of imbalanced datasets. As such, there is a need for a thorough survey of recent literature in credit scoring. This article employs a systematic literature survey approach to systematically review statistical and machine learning models in credit scoring, to identify limitations in literature, to propose a guiding machine learning framework, and to point to emerging directions. This literature survey is based on 74 primary studies, such as journal and conference articles, that were published between 2010 and 2018. According to the meta-analysis of this literature survey, we found that in general, an ensemble of classifiers performs better than single classifiers. Although deep learning models have not been applied extensively in credit scoring literature, they show promising results. (C) 2020 Elsevier B.V. All rights reserved.
机译:在实践中,作为一种众所周知的统计方法,逻辑回归模型用于评估借款人的信誉,因为其预测中的简单性和透明度。但是,在文献中,可以找到复杂的机器学习模型,可以取代逻辑回归模型。尽管机器学习模型在信用评分中进行了进展和应用,但仍有两个主要问题:一些机器学习模型的无法解决,解释预测;和不平衡数据集的问题。因此,需要对最近的信用评分进行彻底调查。本文采用系统的文献调查方法来系统地审查信用评分中的统计和机器学习模型,以确定文学中的局限性,提出指导机器学习框架,并指向新兴方向。该文献调查基于74项初级研究,如2010年至2018年在2010年至2018年之间发布的杂志和会议文章。根据本文的荟萃分析,我们发现一般来说,一般的分类器的集合比单一表现更好分类器。虽然深入学习模型尚未在信用评分文献中广泛应用,但他们表现出了有希望的结果。 (c)2020 Elsevier B.V.保留所有权利。

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