A proposed multidimensional model for predicting financial distress: an empirical study on Egyptian listed firms

IF 2.9 Q2 BUSINESS Future Business Journal Pub Date : 2024-04-20 DOI:10.1186/s43093-024-00328-2
Noha Adel Mohamed Abdelkader, Hayam Hassan Wahba
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Abstract

Although there has been a growing interest by researchers worldwide over the past decades to identify the factors pertaining to corporate financial distress and to develop financial distress prediction models that serve as early warning signs to the various firm stakeholders, notably to date, studies that were conducted were context specific and cannot be objectively generalized to other countries and rendered mixed inconclusive results. Therefore, the main objective of this study is to thoroughly investigate the factors that affect corporate financial distress in Egypt and to develop a multidimensional financial distress prediction model. Using comprehensive data of EGX100 listed firms, the researcher examines the role played by financial ratios, market-based indicators, macroeconomic factors, and corporate governance mechanisms in modeling corporate financial distress. Empirical results indicate that after controlling for the COVID-19 effects, the most significant financial ratios in predicting corporate financial distress are the working capital to total assets ratio, earnings before interest and taxes to total assets ratio, and the sales to total assets ratio. Such ratios are negatively related to the likelihood of corporate financial distress. However, the market value of equity to total liabilities ratio, and GDP growth rate have a positive impact on the likelihood of financial distress. However, the retained earnings to total assets ratio, the corporate governance mechanisms, the firm market capitalization, the interest rate, and the consumer price index are insignificant in predicting corporate financial distress in the Egyptian context. The resulting model demonstrates outstanding classification accuracy at around 96%.

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预测财务困境的拟议多维模型:对埃及上市公司的实证研究
尽管过去几十年来,世界各地的研究人员越来越关注确定与公司财务困境有关的因素,并开发财务困境预测模型,作为向公司各利益相关方发出的预警信号,但值得注意的是,迄今为止所进行的研究都是针对具体情况的,不能客观地推广到其他国家,而且结果也是好坏参半,没有定论。因此,本研究的主要目的是深入研究影响埃及公司财务困境的因素,并建立一个多维财务困境预测模型。研究人员利用 EGX100 上市公司的综合数据,考察了财务比率、市场指标、宏观经济因素和公司治理机制在企业财务困境模型中发挥的作用。实证结果表明,在控制了 COVID-19 的影响后,预测企业财务困境最显著的财务比率是营运资本与总资产比率、息税前利润与总资产比率以及销售额与总资产比率。这些比率与企业陷入财务困境的可能性呈负相关。然而,股票市值与总负债比率和国内生产总值增长率对财务困境的可能性有正向影响。然而,留存收益与总资产比率、公司治理机制、公司市值、利率和消费物价指数在预测埃及企业财务困境方面并不显著。由此得出的模型显示出出色的分类准确率,约为 96%。
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自引率
14.70%
发文量
53
审稿时长
9 weeks
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