Title :
Studying on Forecasting the Enterprise Bankruptcy Based on SVM
Author :
Xu Xiao-si ; Chen Ting ; Ruo-en, Ren
Author_Institution :
Dept. of Manage., North China Med. Coll.
Abstract :
Enterprise bankruptcy forecasting is very important to manage credit risk, and a lot of scholars applied themselves to study how to increase the accuracy of bankruptcy forecast. The paper introduces a new bankruptcy forecast tool: support machine vector (SVM). SVM is based on the Vapnik-Chervonenks (VC) dimension of statistical learning theory and structural risk minimization inductive principle, which can deal with the small sample, non-linear and high dimension problem, and some researchers applied the SVM model to the artificial intelligence identification and biology identification. The paper introduces the theory of SVM, the regression algorithm and implement of SVM, then use the data of China Stock Exchange to analyze positively, the results show that the SVM model has the higher accuracy compared with neural net or common statistical methods when forecasting enterprise bankruptcy
Keywords :
economic forecasting; learning by example; regression analysis; stock markets; support vector machines; China Stock Exchange; SVM model; Vapnik-Chervonenks dimension; credit risk management; enterprise bankruptcy forecasting; regression algorithm; statistical learning theory; structural risk minimization inductive principle; support machine vector; Algorithm design and analysis; Artificial intelligence; Biological system modeling; Computational biology; Predictive models; Risk management; Statistical learning; Stock markets; Support vector machines; Virtual colonoscopy; Bankruptcy forecast; Credit risk; Support machine vector;
Conference_Titel :
Management Science and Engineering, 2006. ICMSE '06. 2006 International Conference on
Conference_Location :
Lille
Print_ISBN :
7-5603-2355-3
DOI :
10.1109/ICMSE.2006.314022