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Credit Risk Evaluation Using Cycle Reservoir Neural Networks with Support Vector Machines Readout

机译:使用循环储层神经网络与支持向量机读出的信用风险评估

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Automated credit approval helps credit-granting institutions in reducing time and efforts in analyzing credit approval requests and to distinguish good customers from bad ones. Enhancing the automated process of credit approval by integrating it with a good business intelligence (BI) system puts financial institutions and banks in a better position compared to their competitors. In this paper, a novel hybrid approach based on neural network model called Cycle Reservoir with regular Jumps (CRJ) and Support Vector Machines (SVM) is proposed for classifying credit approval requests. In this approach, the readout learning of CRJ will be trained using SVM. Experiments results confirm that in comparison with other data mining techniques, CRJ with SVM readout gives superior classification results.
机译:自动信贷批准有助于信贷授予机构在分析信用审批请求方面减少时间和努力,并将良好的客户与坏人区分开。通过将其与良好的商业情报(BI)系统集成,加强信用批准自动化进程,与竞争对手相比,将金融机构和银行置于更好的位置。本文提出了一种基于具有常规跳跃(CRJ)和支持向量机(SVM)的循环储存器的神经网络模型的新型混合方法,用于分类信用审批请求。在这种方法中,CRJ的读数学习将使用SVM训练。实验结果证实,与其他数据挖掘技术相比,具有SVM读数的CRJ提供了卓越的分类结果。

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