Yu Cheng, Qin Yang, Liyang Wang, Ao Xiang, Jingyu Zhang
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引用次数: 0
摘要
在全球化的金融市场中,商业银行面临着不断升级的信用风险,从而对银行资产的安全性和金融稳定性提出了更高的要求。本研究利用先进的神经网络技术,特别是反向传播(BP)神经网络,开创了一种新型的商业银行信贷风险防范模型。论述首先仔细研究了传统的金融风险防范模型,如 ARMA、ARCH 和 Logistic 回归模型,并批判性地分析了它们在现实世界中的应用。随后,论述阐述了 BP 神经网络模型的构建过程,包括网络架构设计、激活函数选择、参数初始化和目标函数构建。通过比较分析,阐明了神经网络模型在防范商业银行信贷风险方面的优越性。实验部分选择了特定的银行数据,验证了模型的预测准确性和实用性。研究结果表明,该模型能有效提高信贷风险管理的预见性和精确性。
Research on Credit Risk Early Warning Model of Commercial Banks Based on Neural Network Algorithm
In the realm of globalized financial markets, commercial banks are confronted
with an escalating magnitude of credit risk, thereby imposing heightened
requisites upon the security of bank assets and financial stability. This study
harnesses advanced neural network techniques, notably the Backpropagation (BP)
neural network, to pioneer a novel model for preempting credit risk in
commercial banks. The discourse initially scrutinizes conventional financial
risk preemptive models, such as ARMA, ARCH, and Logistic regression models,
critically analyzing their real-world applications. Subsequently, the
exposition elaborates on the construction process of the BP neural network
model, encompassing network architecture design, activation function selection,
parameter initialization, and objective function construction. Through
comparative analysis, the superiority of neural network models in preempting
credit risk in commercial banks is elucidated. The experimental segment selects
specific bank data, validating the model's predictive accuracy and
practicality. Research findings evince that this model efficaciously enhances
the foresight and precision of credit risk management.