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Using Rough Set Theory and Decision Trees to Diagnose Enterprise Distress - Consideration of Corporate Governance Variables

机译:使用粗糙集理论和决策树来诊断企业窘迫 - 考虑公司治理变量

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This study discusses the key factors of financial distress warning models for companies using corporate governance variables and financial ratios as the research variables, sieving out influential variables based on the attribute simplification process of rough set theory (RST). Then, we construct some classification models for diagnosing enterprise distress based on RST, using a data mining technique of decision trees with the selected indicators and variables. The empirical results obtained from analysis of enterprise distress indicators, show that financial distress is not only affected by the traditional financial ratios, but also by corporate governance variables. In addition, enterprise distress diagnosis models constructed based on RST and decision trees can effectively diagnose firms in times of crisis. In particular, the RST models are more accurate. This study provides a reference for better understanding the symptoms that might lead to a company's financial crisis in advance and thus provide a valuable reference for investment decision making by stakeholders.
机译:本研究讨论了使用公司治理变量和财务比率作为研究变量的财务遇险警告模型的关键因素,这是基于粗糙集理论(RST)属性简化过程的影响变量。然后,我们使用与所选指示符和变量的决策树的数据挖掘技术构建一些用于基于RST诊断企业遇险的分类模型。从企业痛苦指标分析中获得的经验结果,表明财务困境不仅受到传统金融比率的影响,还由公司治理变量影响。此外,基于RST和决策树构建的企业痛苦诊断模型可以在危机时期有效地诊断公司。特别是,RST模型更准确。本研究提供了更好地理解可能提前对公司金融危机的症状的参考,从而为利益攸关方提供有价值的投资决策参考。

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