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Financial crisis prediction based on distance to default and feature weighted support vector machine

机译:基于违约距离和特征加权支持向量机的金融危机预测

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In order to keep the market run regularly, the prediction of financial crisis becomes necessary and urgent. A new risk rating method based on distance to default (DD) and order statistics (OS) is established to classify listed companies into three ratings according to their financial risks. In addition, financial indicators are weighted based on DD and grey relational degree. On the basis of the new method, financial crisis prediction is researched based on feature weighting SVM (DD-FWSVM) model with three classifications in the study. The experimental analysis is conducted based on the listed companies in the Growth Enterprises Market (GEM) of China at last and the result demonstrates that our model has better performance in financial crisis prediction when compared with other methods.
机译:为了定期保持市场,金融危机的预测变得必要和迫切。建立基于违约距离(DD)和订单统计信息(OS)的新风险评级方法,以根据其财务风险将上市公司分为三个额定值。此外,财务指标基于DD和灰色关系程度加权。在新方法的基础上,基于具有三种分类的特征加权SVM(DD-FWSVM)模型研究了金融危机预测。实验分析是基于中国增长企业市场(GEM)的上市公司的实验分析,结果表明,与其他方法相比,我们的模型在金融危机预测方面具有更好的性能。

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