首页> 外文期刊>Expert systems with applications >Using Neural Networks And Data Mining Techniques For The Financial Distress Prediction Model
【24h】

Using Neural Networks And Data Mining Techniques For The Financial Distress Prediction Model

机译:使用神经网络和数据挖掘技术建立财务困境预测模型

获取原文
获取原文并翻译 | 示例

摘要

The operating status of an enterprise is disclosed periodically in a financial statement. As a result, investors usually only get information about the financial distress a company may be in after the formal financial statement has been published. If company executives intentionally package financial statements with the purpose of hiding the actual status of the company, then investors will have even less chance of obtaining the real financial information. For example, a company can manipulate its current ratio by up to 200% so that its liquidity deficiency will not show up as a financial distress in the short run. To improve the accuracy of the financial distress prediction model, this paper adopted the operating rules of the Taiwan stock exchange corporation (TSEC) which were violated by those companies that were subsequently stopped and suspended, as the range of the analysis of this research. In addition, this paper also used financial ratios, other non-financial ratios, and factor analysis to extract adaptable variables. Moreover, the artificial neural network (ANN) and data mining (DM) techniques were used to construct the financial distress prediction model. The empirical experiment with a total of 37 ratios and 68 listed companies as the initial samples obtained a satisfactory result, which testifies for the feasibility and validity of our proposed methods for the financial distress prediction of listed companies. This paper makes four critical contributions: (1) The more factor analysis we used, the less accuracy we obtained by the ANN and DM approach. (2) The closer we get to the actual occurrence of financial distress, the higher the accuracy we obtain, with an 82.14% correct percentage for two seasons prior to the occurrence of financial distress. (3) Our empirical results show that factor analysis increases the error of classifying companies that are in a financial crisis as normal companies. (4) By developing a financial distress prediction model, the ANN approach obtains better prediction accuracy than the DM clustering approach. 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.
机译:企业的经营状况在财务报表中定期披露。结果,投资者通常只会在正式财务报表发布后才获得有关公司可能面临的财务困境的信息。如果公司高管故意隐藏财务状况以隐藏公司的实际状况,那么投资者获得真实财务信息的机会就更少了。例如,一家公司可以将其流动比率控制在200%以内,以使其短期内不会出现流动资金短缺的情况。为了提高财务困境预测模型的准确性,本文采用了台湾证券交易所公司(TSEC)的操作规则,这些规则后来被停业和停业的公司所违反,是本研究的分析范围。此外,本文还使用财务比率,其他非财务比率和因素分析来提取适应性变量。此外,人工神经网络(ANN)和数据挖掘(DM)技术被用来构建财务困境预测模型。以37个比率和68个上市公司作为初始样本的实证实验获得了满意的结果,证明了我们提出的上市公司财务困境预测方法的可行性和有效性。本文做出了四个关键的贡献:(1)我们使用的因素分析越多,通过ANN和DM方法获得的准确性就越低。 (2)我们越接近实际发生财务危机,获得的准确性就越高,在发生财务危机之前的两个季节中,正确率达到82.14%。 (3)我们的经验结果表明,因素分析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)通过建立财务困境预测模型,ANN方法比DM聚类方法获得更好的预测精度。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预测公司的潜在财务困境。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号