匈牙利企业破产预测模型

A. Baranyi, Csaba Faragó, C. Fekete, Z. Széles
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摘要

中小企业对匈牙利经济非常重要。在我们的分析中,我们仔细研究了Altman的Z-score破产预测模型的公开版本,该模型适用于未在证券交易所上市的公司,以及原始的和经过修改、调整的Springate破产预测模型。调整后的Springate模型仅将37%的实际破产公司视为资不抵债,而经过验证的Altman Z-score模型仅能够识别出46%的稳定的正在进行的公司。方差分析未发现破产现象与金融类型之间存在相关性。通过逻辑回归,我们成功地建立了一个模型,该模型可以以78%的概率预测被检查企业的偿付能力。在我们研究的最后一部分,我们研究了基于神经网络的教学人工智能和创建决策树。即使使用基于决策树的第一个破产预测模型,也比使用其他方法获得了更有效的预测系统。我们假设只有使用人工智能组成的决策树才能有效地预测所有被检验模型的破产。
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The Bankruptcy Forecasting Model of Hungarian Enterprises
The SME sector is really important for the Hungarian economy. In our analysis, we had a closer look at the publicly accessible version of Altman's Z-score bankruptcy forecast model for companies not quoted on the Stock Exchange together with the original and the modified, adjusted Springate bankruptcy prediction model. The adjusted Springate model regarded only 37% of the companies having gone bankrupt in real as insolvent, while the justified Altman Z-score model was able to identify only 46% of the stable ongoing firms. The variance analysis could not detect any correlations between the phenomenon of bankruptcy and financial types. By means of logistic regression, we managed to create a model that can forecast solvency for the examined enterprises with a probability of 78%. In the last part of our research, we were dealing with teaching artificial intelligence and creating decision trees based on neural network. Even by means of the first bankruptcy forecast model based on decision trees, a more efficient predicting system was gained than by using any other methods. We assume that only the decision tree made up by using artificial intelligence is efficient in forecasting bankruptcy of all the examined models.
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