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Enterprise Credit Risk Evaluation Modeling and Empirical Analysis via GRNN Neural Network

机译:通过GRNN神经网络的企业信用风险评估建模与实证分析

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Enterprise credit risk evaluation is of great importance in the credit process in the commercial banking system. Based on the previous researches on the commercial bank credit risk assessment model, this essay starts from analyzing the factors which will influence the commercial bank credit management, and then moves on to build a more comprehensive credit risk evaluation index system which contains 3 levels of 12 indexes. Afterwards, this essay chooses the GRNN Neural Network to be the commercial bank credit risk assessment model by means of MATLAB. All the chosen samples have been put into empirical analysis and the results shows that the discriminate accuracy rate for the good enterprises is 92.16% while for the bad enterprises is 93.75% in this model. Therefore, this outstanding discriminate accuracy rate proves that this model could be used effectively and efficiently.
机译:企业信贷风险评估在商业银行系统中的信用过程中具有重要意义。 根据对商业银行信贷风险评估模型的先前研究,本文开始分析影响商业银行信用管理的因素,然后继续构建更全面的信用风险评估指标体系,其中包含3级的3级 索引。 之后,本文将GRNN神经网络选择通过MATLAB成为商业银行信用风险评估模型。 所有所选样品都投入了实证分析,结果表明,良好企业的歧视准确率为92.16%,而糟糕的企业在此模型中为93.75%。 因此,这种出色的歧视精度率证明了该模型可以有效且有效地使用。

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