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An application of “Neuro-Logit” new modeling tool in corporate financial distress diagnostic

机译:新“ Neuro-Logit”建模工具在企业财务困境诊断中的应用

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During the last decades and recession of 2007-2009 witnessed many global financial crises. Consequently, this research represents a proactive study via introducing new modeling tool; in order to diagnose the financial distress and assess its probability of occurrence. The Neuro-Logit is a new approach for diagnosis, prediction and forecasting corporate financial distress. This tool acts as Logit (Logistic Regression Analysis), but the equations are built based on the basic algorithm of ANN (Artificial Neural Network). ANN and Logit are widely used as modeling tools in many business applications; Neuro-Logit model reduces most of ANN and Logit limitations. The sample in this research has been drawn from the available financial statements (Financial Ratio-Based Model) that are belonged to most active non-financial firms in Egyptian stock markets. The observations are quarterly basis observations, covering six-year time period (2004-2009). The overall results show that Neuro-Logit model has superior outcome comparing to legacy Logit model, where the overall classification accuracy rate almost 86% with Type I Error 10.13%, 85.33% harmonic mean between Recall and Precision values and also good Kappa coefficient (0.7169) and Matthew Correlation Coefficient (0.7217). The paper revolves the diagnosing the financial health of the firms, and is an extension for the latest Egyptian model in 2007 which concerns with six-year span 2000-2005. The time span of the paper for model building is three-year (2005-2007) which is covering prior-recession time. The paper can be considered as second trial of supervised financial distress prediction model and the fourth Egyptian model with superior outcome supporting to be recommended in corporate financial failure assessment and diagnosis. Also the research is presenting empirically an innovative modeling approach, where the ANN is used as statistical tool.
机译:在过去的几十年和2007-2009年的衰退中,目睹了许多全球金融危机。因此,这项研究是通过引入新的建模工具进行的前瞻性研究。为了诊断财务困境并评估其发生的可能性。 Neuro-Logit是一种用于诊断,预测和预测公司财务困境的新方法。该工具用作Logit(逻辑回归分析),但是方程是基于ANN(人工神经网络)的基本算法构建的。 ANN和Logit被广泛用作许多业务应用程序中的建模工具。 Neuro-Logit模型减少了ANN和Logit的大部分限制。本研究中的样本来自可用的财务报表(基于财务比率的模型),这些报表属于埃及股票市场中最活跃的非金融公司。这些意见是每季度一次的意见,涵盖了六年的时间段(2004年至2009年)。总体结果表明,与传统Logit模型相比,Neuro-Logit模型具有更好的结果,后者的总体分类准确率几乎为86%,I型错误为10.13%,召回率和Precision值之间的谐波均值为85.33%,并且卡伯系数也很好(0.7169 )和Matthew Correlation Coefficient(0.7217)。本文围绕诊断公司的财务状况展开,是对2007年最新埃及模型的扩展,该模型涉及2000年至2005年的六年。用于模型构建的论文的时间跨度为三年(2005年至2007年),涵盖了先前的衰退时间。本文可被视为有监督财务危机预测模型的第二次试验,以及具有卓越结果支持的第四埃及模型,被推荐用于公司财务失败评估和诊断。此外,研究还凭经验提出了一种创新的建模方法,其中将ANN用作统计工具。

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