The development of the electric power enterprise concerns the national economic lifeline. In this paper, the Support Vector Machines (SVMs) early-warning model which is based on Genetic Algorithm (GA) optimization is established, with GA’s ameliorating SVMs. Using the penalty parameters and the kernel parameters of the process of GA’s optimizing SVMs, this paper gives full play to the global searching ability of GA and overcomes the problems generated from the selection of the SVMs model parameters. As a result, it is possible to initiate the financial risk analysis of the electric power enterprises and enable them to take timely measures to deal with issues that have emerged during the process of their development. It is displayed in the instance verification results of the listed companies in the electric power industry that SVMs which are based on GA optimization can predict the financial risks of the listed companies in the electric power industry accurately and effectively.
[1]
Ali Serhan Koyuncugil,et al.
Financial early warning system model and data mining application for risk detection
,
2012,
Expert Syst. Appl..
[2]
Huang Li.
Financial Crisis Warning Model based on BP Neural Network
,
2005
.
[3]
Chih-Hung Wu,et al.
A real-valued genetic algorithm to optimize the parameters of support vector machine for predicting bankruptcy
,
2007,
Expert Syst. Appl..
[4]
Vladimir N. Vapnik,et al.
The Nature of Statistical Learning Theory
,
2000,
Statistics for Engineering and Information Science.