Author
Listed:
- Haojie Liao
- Huabo Yue
- Yibin Lin
- Dong Li
- Lei Zhang
- Wei Liu
Abstract
A BP neural network-based model is proposed to study corporate financial risk analysis and internal accounting management. Using MATLAB software and the BP neural network model, it is possible to obtain enterprise financing risk situations over a period by simulating and predicting enterprise financing risks by creating an early warning model for enterprise financing risks. Finally, from the point of view of the company's internal and external operations, the company's financial risk prevention measures and proposals are proposed to improve the financing efficiency of the companies and to prevent financial risks. This study predicts the financing risk of companies listed on the Mongolian Stock Exchange and analyzes the causes of the risk status. According to the test results, the learning speeds for successive substitutions are as follows: 0.005, 0.01, 0.02, 0.03, and 0.04. Finally, it was found that the error was minimal and the stability was best when the learning speed was exactly 0.01. The error is 0.0031011, and the step size is 157, which is only slightly lower than the target error value, which indicates that the learning speed is good. In addition, the novelty of this study is the use of the BP neural network model to conduct an early warning study of corporate financial risks. The BP neural network assessment model for corporate lending risk in this document is highly accurate. In addition to providing theoretical insights to researchers, it can be a good tool for banks to realistically assess the credit risk of SME supply chain financing.
Suggested Citation
Haojie Liao & Huabo Yue & Yibin Lin & Dong Li & Lei Zhang & Wei Liu, 2022.
"Enterprise Financing Risk Analysis and Internal Accounting Management Based on BP Neural Network Model,"
Mathematical Problems in Engineering, Hindawi, vol. 2022, pages 1-13, May.
Handle:
RePEc:hin:jnlmpe:8627185
DOI: 10.1155/2022/8627185
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