Research on Early Warning Model of Financial Crisis Based on SCAD-SVM

Yuan Yan, Lingge Zhao, Yuhao Tang, Tianxiao Luo
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Abstract

After more than half a century of development, there are numerous empirical analyses on financial early warning models, most of which take listed companies as the research object. The financial crisis early warning of listed companies is a small sample, and the application of neural network and logistic regression model has the problem of over-fitting, which leads to the effect of the model is not obvious. In recent years, the support vector machine method given risk minimization criteria has been widely used in financial crisis early warning, but few scholars combine SVM and penalty letter SCAD methods for financial early warning analysis. Therefore, this paper proposes an improved variable selection method Scad and support vector machine (SVM) combined model algorithm to select the best indicators and used for financial crisis early warning, and then based on the Shanghai and Shenzhen A-share listed companies as the research sample comparison Empirical effects of SVM, Lasso-SVM and Dantzig-SVM, the research results show that the selection of variables can greatly improve the accuracy of the financial crisis early warning model, and the SCAD method in the variable selection method has more advantages than Lasso and Dantzig. The SCAD-SVM model proposed has an accuracy rate of over 96% on both the training set and the test set in this paper. The model has a good classification effect and a strong economic interpretation ability. The research results of this paper not only enrich the financial early warning model, but also greatly improve the accuracy of financial crisis early warning, and provide a theoretical basis for the scientific decision-making of enterprises and shareholders.
基于SCAD-SVM的金融危机预警模型研究
经过半个多世纪的发展,对财务预警模型的实证分析层出不穷,但大多以上市公司为研究对象。上市公司财务危机预警是一个小样本,应用神经网络和逻辑回归模型存在过拟合的问题,导致模型的效果不明显。近年来,基于风险最小化准则的支持向量机方法在金融危机预警中得到了广泛的应用,但很少有学者将SVM与罚信SCAD方法结合起来进行金融预警分析。因此,本文提出了一种改进的变量选择方法Scad和支持向量机(SVM)相结合的模型算法来选择最优指标并用于金融危机预警,然后以沪深a股上市公司为研究样本比较SVM、Lasso-SVM和dantzigg -SVM的实证效果,研究结果表明,变量的选择可以大大提高金融危机预警模型的准确性。在变量选择方法中,SCAD方法比Lasso和Dantzig更具优势。本文提出的SCAD-SVM模型在训练集和测试集上的准确率都在96%以上。该模型具有良好的分类效果和较强的经济解释能力。本文的研究成果不仅丰富了财务预警模型,而且大大提高了财务危机预警的准确性,为企业和股东的科学决策提供了理论依据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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