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Benchmarking state-of-the-art classification algorithms for credit scoring: An update of research

机译:基准评估信用评分的最新分类算法:最新研究

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摘要

Many years have passed since Baesens et al. published their benchmarking study of classification algorithms in credit scoring [Baesens, B., Van Gestel, T., Viaene, S., Stepanova, M., Suykens, J., & Vanthienen, J. (2003). Benchmarking state-of-the-art classification algorithms for credit scoring.journal of the Operational Research Society, 54(6), 627-635.]. The interest in prediction methods for scorecard development is unbroken. However, there have been several advancements including novel learning methods, performance measures and techniques to reliably compare different classifiers, which the credit scoring literature does not reflect. To close these research gaps, we update the study of Baesens et al. and compare several novel classification algorithms to the state-of-the-art in credit scoring. In addition, we examine the extent to which the assessment of alternative scorecards differs across established and novel indicators of predictive accuracy. Finally, we explore whether more accurate classifiers are managerial meaningful. Our study provides valuable insight for professionals and academics in credit scoring. It helps practitioners to stay abreast of technical advancements in predictive modeling. From an academic point of view, the study provides an independent assessment of recent scoring methods and offers a new baseline to which future approaches can be compared. (C) 2015 Elsevier B.V. and Association of European Operational Research Societies (EURO) within the International Federation of Operational Research Societies (IFORS). All rights reserved.
机译:自Baesens等人以来已经过去了许多年。发表了他们在信用评分中的分类算法基准研究[Baesens,B.,Van Gestel,T.,Viaene,S.,Stepanova,M.,Suykens,J.,&Vanthienen,J.(2003)。对信用评分进行基准化的最新分类算法。《运筹学学会杂志》,54(6),627-635。]。对计分卡发展的预测方法的兴趣从未间断。但是,已经有了一些进步,包括新颖的学习方法,性能指标和技术,可以可靠地比较不同的分类器,而信用评分文献并未反映出这一点。为了弥补这些研究空白,我们更新了Baesens等人的研究。并将几种新颖的分类算法与最新的信用评分方法进行比较。另外,我们研究了在预测准确性的既定指标和新颖指标之间,替代性计分卡评估的差异程度。最后,我们探索更准确的分类器是否在管理上有意义。我们的研究为信用评分的专业人士和学者提供了宝贵的见解。它可以帮助从业人员紧跟预测建模方面的技术进步。从学术角度来看,该研究对最近的评分方法进行了独立评估,并提供了可以与未来方法进行比较的新基准。 (C)2015年Elsevier B.V.和国际运营研究学会联合会(IFORS)中的欧洲运营研究学会协会(EURO)。版权所有。

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