2009 | OriginalPaper | Buchkapitel
Multiple Criteria Quadratic Programming for Financial Distress Prediction of the Listed Manufacturing Companies
verfasst von : Ying Wang, Peng Zhang, Guangli Nie, Yong Shi
Erschienen in: Computational Science – ICCS 2009
Verlag: Springer Berlin Heidelberg
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Nowadays, how to effectively predict financial distress has become an important issue for companies, investors and many other user groups. The purpose of this paper is to apply the Multiple Criteria Quadratic Programming (MCQP) model to predict financial distress of the listed manufacturing companies. Firstly, we introduce the formulation of MCQP model. Then we use ten-folder cross validation to test the stability and accuracy of MCQP model on a real-life listed companies’ financial ratios dataset. At last, we compare MCQP model with other two well-known models: Logistic Regression and SVM models. The experimental results show that MCQP is accurate and stable for predicting the financial distress of the listed manufacturing companies. Consequently, we can safely say that MCQP is capable of providing stable and credible results in predicting financial distress.