利用人工智能技术对国家助学贷款进行个人信用评级

Jian Hu
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引用次数: 3

摘要

国家助学贷款具有商业贷款的一般特征,是商业银行提供的一项金融信贷服务。但是商业银行一般的个人信用评级评估系统,由于贷款人大学生没有信用记录,无法做出正确的信用评级。为了避免信用风险,必须建立合理的大学生信用评估体系。利用人工神经网络的自学习、自组织、自适应和非线性动态处理特性,提出了一种用于大学生信用评价的反向传播神经网络。利用某银行提供的几个样本,通过MATLAB对网络进行训练和测试。网络预测值与实际值的误差最大值仅为2.92%。仿真结果表明,所开发的算法对于大学生个人信用状况的评估是相当有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Personal credit rating using Artificial Intelligence technology for the National Student Loans
National student loans have the general features of commercial loans, and are a financial credit services provided by commercial banks. But the general personal credit rating assessment system of commercial bank can not make the correct credit rating because the lender, college students, have no credit history. To avoid the credit risk, a rational credit assessment system must to be established for college Students. With the self-learning, self-organizing, adaptive and nonlinear dynamic handling characteristics of Artificial Neural Network, a Back Propagatio neural network was developed to evaluate the credit rating about a college student. Several samples, which were provided by a bank, were used for network training and testing by MATLAB. The maximum value of the error between the prediction value of the network and actual value is only 2.92%. Simulation results demonstrate that the algorithm developed is fairly efficient for the assessment about the college student's personal credit situation.
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