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Application of eXtreme gradient boosting trees in the construction of credit risk assessment models for financial institutions

机译:极端梯度升压树在金融机构信用风险评估模型中的应用

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The majority of the studies on credit risk assessment models for financial institutions during recent years focus on the improvement of imbalanced data or on the enhancement of classification accuracy with multistage modeling. Whilst multistage modeling and data pre-processing can boost accuracy somewhat, the heterogeneous nature of data may affects the classification accuracy of classifiers. This paper intends to use the classifier, eXtreme gradient boosting tree (XGBoost), to construct a credit risk assessment model for financial institutions. Cluster-based under-sampling is deployed to process imbalanced data. Finally, the area under the receiver operative curve and the accuracy of classifications are the assessment indicators, in the comparison with other frequently used single-stage classifiers such as logistic regression, self-organizing algorithms and support vector machine. The results indicate that the XGBoost classifier used by this paper achieve better results than the other three and can serve as a superior tool for the development of credit risk models for financial institutions. (C) 2018 Elsevier B.V. All rights reserved.
机译:近年来金融机构信贷风险评估模型的大多数研究焦点,重点改善不平衡数据或通过多级模型提高分类准确性。虽然多级建模和数据预处理可以提升精度稍微,但数据的异构性质可能会影响分类器的分类准确性。本文打算使用分类器,极端梯度升压树(XGBoost),为金融机构构建信用风险评估模型。部署基于群集的下采样以处理不平衡数据。最后,接收器操作曲线下的区域和分类的准确性是评估指标,与其他常用的单阶段分类器(如逻辑回归,自组织算法和支持向量机)的比较。结果表明,本文使用的XGBoost分类器比其他三个实现更好的结果,可以作为开发金融机构信用风险模型的优越工具。 (c)2018 Elsevier B.v.保留所有权利。

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