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Credit risk assessment with a multistage neural network ensemble learning approach

机译:多阶段神经网络集成学习方法的信用风险评估

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摘要

In this study, a multistage neural network ensemble learning model is proposed to evaluate credit risk at the measurement level. The proposed model consists of six stages. In the first stage, a bagging sampling approach is used to generate different training data subsets especially for data shortage. In the second stage, the different neural network models are created with different training subsets obtained from the previous stage. In the third stage, the generated neural network models are trained with different training datasets and accordingly the classification score and reliability value of neural classifier can be obtained. In the fourth stage, a decorrelation maximization algorithm is used to select the appropriate ensemble members. In the fifth stage, the reliability values of the selected neural network models (i.e., ensemble members) are scaled into a unit interval by logistic transformation. In the final stage, the selected neural network ensemble members are fused to obtain final classification result by means of reliability measurement. For illustration, two publicly available credit datasets are used to verify the effectiveness of the proposed multistage neural network ensemble model.
机译:在这项研究中,提出了一个多阶段神经网络集成学习模型来评估度量级别的信用风险。提出的模型包括六个阶段。在第一阶段,使用装袋采样方法来生成不同的训练数据子集,尤其是针对数据短缺的情况。在第二阶段,使用从上一阶段获得的不同训练子集创建不同的神经网络模型。在第三阶段,使用不同的训练数据集对生成的神经网络模型进行训练,从而获得神经分类器的分类得分和可靠性值。在第四阶段,使用解相关最大化算法来选择适当的集合成员。在第五阶段中,通过逻辑变换将所选择的神经网络模型(即,集合成员)的可靠性值缩放为单位间隔。在最后阶段,将选定的神经网络集合成员进行融合,以通过可靠性测量获得最终分类结果。为了说明,使用两个可公开获得的信用数据集来验证所提出的多级神经网络集成模型的有效性。

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