2022
DOI: 10.1155/2022/9754428
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Research on Commercial Bank Risk Early Warning Model Based on Dynamic Parameter Optimization Neural Network

Abstract: Based on the background of big data, it is necessary to study the dynamic parameter optimization of the commercial bank risk model neural network. Several customer information attribute groups that have an impact on loan customer rating are selected, and the existing customer data are used to train the network model of the attribute group and customer default rate, so that it can predict the customer’s default rate according to the newly entered loan customer information and then predict whether the customer d… Show more

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Cited by 2 publications
(3 citation statements)
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“…It indicates that there is a dependency or causal relationship between related variables (the parent node points to the child node, the one without the parent node is called the root node, the one without the child node is called the leaf node, and there is independence between the child node and other unrelated nodes) [29]. BN can effectively express and handle the correlation and uncertainty of variables and use conditional probability to bring relevant information into the same network structure [30], which is more intuitive and closer to people's thinking modes [31]. Compared with traditional fault tree, event tree analysis, and other methods, BN can realize not only two-way analysis but also perform common cause factor analysis [32], which is suitable for analyzing the risk of complex systems.…”
Section: Bayesian Network Modelmentioning
confidence: 99%
“…It indicates that there is a dependency or causal relationship between related variables (the parent node points to the child node, the one without the parent node is called the root node, the one without the child node is called the leaf node, and there is independence between the child node and other unrelated nodes) [29]. BN can effectively express and handle the correlation and uncertainty of variables and use conditional probability to bring relevant information into the same network structure [30], which is more intuitive and closer to people's thinking modes [31]. Compared with traditional fault tree, event tree analysis, and other methods, BN can realize not only two-way analysis but also perform common cause factor analysis [32], which is suitable for analyzing the risk of complex systems.…”
Section: Bayesian Network Modelmentioning
confidence: 99%
“…e government has issued a series of policy support, theoretical research has been deepened, and practical innovation has continued to innovate [1][2][3][4][5].…”
Section: Introductionmentioning
confidence: 99%
“…(3) Loan scale: the scale of bank loan funds is different, the loan strength is different, and the bank credit structure is also different. Commercial banks with larger loan scales mainly extend credit to large and…”
mentioning
confidence: 99%