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Predicting corporate financial distress based on integration of decision tree classification and logistic regression

机译:基于决策树分类和逻辑回归的集成预测公司财务困境

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Lately, stock and derivative securities markets continuously and rapidly evolve in the world. As quick market developments, enterprise operating status will be disclosed periodically on financial statement. Unfortunately, if executives of firms intentionally dress financial statements up, it will not be observed any financial distress possibility in the short or long run. Recently, there were occurred many financial crises in the international marketing, such as Enron, Kmart, Global Crossing, WorldCom and Lehman Brothers events. How these financial events affect world's business, especially for the financial service industry or investors has been public's concern. To improve the accuracy of the financial distress prediction model, this paper referred to the operating rules of the Taiwan Stock Exchange Corporation (TSEC) and collected 100 listed companies as the initial samples. Moreover, the empirical experiment with a total of 37 ratios which composed of financial and other non-financial ratios and used principle component analysis (PCA) to extract suitable variables. The decision tree (DT) classification methods (C5.0, CART, and CHAID) and logistic regression (LR) techniques were used to implement the financial distress prediction model. Finally, the experiments acquired a satisfying result, which testifies for the possibility and validity of our proposed methods for the financial distress prediction of listed companies. This paper makes four critical contributions: (1) the more PCA we used, the less accuracy we obtained by the DT classification approach. However, the LR approach has no significant impact with PCA; (2) the closer we get to the actual occurrence of financial distress, the higher the accuracy we obtain in DT classification approach, with an 97.01% correct percentage for 2 seasons prior to the occurrence of financial distress; (3) our empirical results show that PCA increases the error of classifying companies that are in a financial crisis as normal companies; and (4) the DT classification approach obtains better prediction accuracy than the LR approach in short run (less one year). On the contrary, the LR approach gets better prediction accuracy in long run (above one and half year). Therefore, this paper proposes that the artificial intelligent (AI) approach could be a more suitable methodology than traditional statistics for predicting the potential financial distress of a company in short run.
机译:最近,股票和衍生品证券市场在世界范围内持续快速发展。随着市场的快速发展,企业的经营状况将在财务报表中定期披露。不幸的是,如果公司的高管故意装扮财务报表,那么无论短期还是长期,都不会发现任何财务困境的可能性。最近,国际市场发生了许多金融危机,例如安然,凯马特,环球电讯,世通和雷曼兄弟事件。这些金融事件如何影响全球业务,尤其是对于金融服务行业或投资者,已成为公众关注的问题。为了提高财务困境预测模型的准确性,本文参考了台湾证券交易所(TSEC)的操作规则,并收集了100家上市公司作为初始样本。此外,以财务比率和其他非财务比率组成的总计37个比率的经验实验,并使用主成分分析(PCA)提取了合适的变量。决策树(DT)分类方法(C5.0,CART和CHAID)和逻辑回归(LR)技术用于实现财务困境预测模型。最后,实验获得了令人满意的结果,证明了我们提出的上市公司财务困境预测方法的可能性和有效性。本文做出了四个关键的贡献:(1)我们使用的PCA越多,通过DT分类方法获得的准确性就越低。但是,LR方法对PCA的影响不大。 (2)我们越接近实际发生财务危机,在DT分类方法中获得的准确性越高,在发生财务危机之前的两个季节中,正确率达到97.01%; (3)我们的经验结果表明,PCA增加了将处于金融危机中的公司归类为正常公司的错误; (4)在短期内(不到一年),DT分类方法比LR方法具有更好的预测准确性。相反,从长远来看(一年半以上),LR方法可以获得更好的预测准确性。因此,本文提出人工智能(AI)方法可能比传统统计方法更适合用于短期预测公司的潜在财务困境。

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