Martín P. Pantoja Aguilar, Guadalupe de Montserrat Pizano Ramírez, Berenice Lerma Torres, Miguel Ángel Zavala Vargas
{"title":"在墨西哥公司中测试Altman的Z -Score来评估模型的准确性","authors":"Martín P. Pantoja Aguilar, Guadalupe de Montserrat Pizano Ramírez, Berenice Lerma Torres, Miguel Ángel Zavala Vargas","doi":"10.21640/ns.v13i27.2881","DOIUrl":null,"url":null,"abstract":"Introduction: in 1968, Altman developed a multivariable predictive Z-score model to assess the probability of a public manufacturing company going to bankruptcy based on financial ratios. Later, Altman (1983) re-stated a more improved Z’’-Score model designed to apply in public or private, manufacturing, or non-manufacturing firms, but also in emerging countries. Prediction of the updated model proved to be highly efficient. This research was conducted to prove the level of accuracy of the Z’’-Score model applied to firms listed in the Mexican Stock Exchange (MSE) since there is little relevant research on this subject. \nMethod: this research was conducted under a quantitative approach as a census and its scope was situational with a non-experimental and longitudinal research design. The period covered by this research was 2012-2019 since the data was available for those years under a somehow stable economic situation without significant economic ups and downs. This research considered the integration of a large financial database and the design of a typology to classify and analyze 155 firms based on a standard deviation and average results of 837 Z’’-scores. A second analysis was conducted to prove if the predicted situation (area) by the Z’’-Score corresponded to the real situation in the marketplace for every company.\nResults: the results showed that the accuracy level of the Altman model decreased when applied to Mexican firms. The error of the model applied to Mexican companies related to those classified in the bankruptcy prediction area was 75 % of misclassification cases. The total error of the model included all areas, or cases, was 18 % of misclassification cases. This model is supposed to be effective within a time frame of two years before a possible bankruptcy. Even considering a longer time frame, the companies located in the bankruptcy prediction area continued having misclassifications representing 57 % of error. The error for the model considering all cases and all areas, was 14 % of misclassification cases. This represented a high level of inefficiency of the model applied to an emerging country companies, such as Mexico.\nDiscussion or conclusion: the model is certainly effective while predicting companies in the areas of non-bankrupt sector and grey, but it was inefficient when predicting the possibility of bankruptcy. It was also demonstrated that the time frame of two years is no longer effective when applying the model to Mexican companies. As a result, more research cases are needed to update the model to perform efficiently in emerging countries including country-specific conditions and considering a different time frame to predict bankruptcy.","PeriodicalId":19411,"journal":{"name":"Nova Scientia","volume":null,"pages":null},"PeriodicalIF":0.0000,"publicationDate":"2021-11-09","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"2","resultStr":"{\"title\":\"Testing Altman’s Z’’-Score to assess the level of accuracy of the model in Mexican companies\",\"authors\":\"Martín P. Pantoja Aguilar, Guadalupe de Montserrat Pizano Ramírez, Berenice Lerma Torres, Miguel Ángel Zavala Vargas\",\"doi\":\"10.21640/ns.v13i27.2881\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Introduction: in 1968, Altman developed a multivariable predictive Z-score model to assess the probability of a public manufacturing company going to bankruptcy based on financial ratios. Later, Altman (1983) re-stated a more improved Z’’-Score model designed to apply in public or private, manufacturing, or non-manufacturing firms, but also in emerging countries. Prediction of the updated model proved to be highly efficient. This research was conducted to prove the level of accuracy of the Z’’-Score model applied to firms listed in the Mexican Stock Exchange (MSE) since there is little relevant research on this subject. \\nMethod: this research was conducted under a quantitative approach as a census and its scope was situational with a non-experimental and longitudinal research design. The period covered by this research was 2012-2019 since the data was available for those years under a somehow stable economic situation without significant economic ups and downs. This research considered the integration of a large financial database and the design of a typology to classify and analyze 155 firms based on a standard deviation and average results of 837 Z’’-scores. A second analysis was conducted to prove if the predicted situation (area) by the Z’’-Score corresponded to the real situation in the marketplace for every company.\\nResults: the results showed that the accuracy level of the Altman model decreased when applied to Mexican firms. The error of the model applied to Mexican companies related to those classified in the bankruptcy prediction area was 75 % of misclassification cases. The total error of the model included all areas, or cases, was 18 % of misclassification cases. This model is supposed to be effective within a time frame of two years before a possible bankruptcy. Even considering a longer time frame, the companies located in the bankruptcy prediction area continued having misclassifications representing 57 % of error. The error for the model considering all cases and all areas, was 14 % of misclassification cases. This represented a high level of inefficiency of the model applied to an emerging country companies, such as Mexico.\\nDiscussion or conclusion: the model is certainly effective while predicting companies in the areas of non-bankrupt sector and grey, but it was inefficient when predicting the possibility of bankruptcy. It was also demonstrated that the time frame of two years is no longer effective when applying the model to Mexican companies. 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引用次数: 2
摘要
引言:1968年,Altman开发了一个基于财务比率的多变量预测z分数模型来评估上市制造公司破产的概率。后来,Altman(1983)重新提出了一个改进的Z -Score模型,该模型不仅适用于公共或私营企业、制造业或非制造业企业,也适用于新兴国家。结果表明,改进后的模型具有较高的预测效率。本研究是为了证明Z " -得分模型适用于墨西哥证券交易所(MSE)上市公司的准确性水平,因为对这一主题的相关研究很少。方法:本研究采用人口普查的定量方法,研究范围为情境性、非实验性、纵向研究设计。本研究涵盖的时期是2012-2019年,因为这些年的数据是在经济形势稳定、没有明显经济起伏的情况下获得的。本研究考虑整合一个大型金融数据库和类型学的设计,根据标准偏差和837 Z -分数的平均结果对155家公司进行分类和分析。第二次分析是为了证明Z”-Score预测的情况(区域)是否与每个公司的市场实际情况相对应。结果:结果表明,Altman模型在适用于墨西哥企业时,其准确性水平有所下降。该模型应用于与破产预测领域分类相关的墨西哥公司的误差为错误分类案例的75%。模型包括所有区域或病例的总错误率为错误分类病例的18%。这种模式应该在可能破产前两年的时间框架内有效。即使考虑到更长的时间框架,位于破产预测区域的公司仍然有57%的错误分类。该模型考虑到所有病例和所有区域,误分率为14%。这表明,将这种模式应用于新兴国家公司(如墨西哥)的效率非常低。讨论或结论:该模型在预测非破产部门和灰色领域的公司时肯定有效,但在预测破产可能性时效率较低。还表明,在将该模式应用于墨西哥公司时,两年的时间框架已不再有效。因此,需要更多的研究案例来更新模型,以便在新兴国家有效地执行,包括国家具体情况,并考虑不同的时间框架来预测破产。
Testing Altman’s Z’’-Score to assess the level of accuracy of the model in Mexican companies
Introduction: in 1968, Altman developed a multivariable predictive Z-score model to assess the probability of a public manufacturing company going to bankruptcy based on financial ratios. Later, Altman (1983) re-stated a more improved Z’’-Score model designed to apply in public or private, manufacturing, or non-manufacturing firms, but also in emerging countries. Prediction of the updated model proved to be highly efficient. This research was conducted to prove the level of accuracy of the Z’’-Score model applied to firms listed in the Mexican Stock Exchange (MSE) since there is little relevant research on this subject.
Method: this research was conducted under a quantitative approach as a census and its scope was situational with a non-experimental and longitudinal research design. The period covered by this research was 2012-2019 since the data was available for those years under a somehow stable economic situation without significant economic ups and downs. This research considered the integration of a large financial database and the design of a typology to classify and analyze 155 firms based on a standard deviation and average results of 837 Z’’-scores. A second analysis was conducted to prove if the predicted situation (area) by the Z’’-Score corresponded to the real situation in the marketplace for every company.
Results: the results showed that the accuracy level of the Altman model decreased when applied to Mexican firms. The error of the model applied to Mexican companies related to those classified in the bankruptcy prediction area was 75 % of misclassification cases. The total error of the model included all areas, or cases, was 18 % of misclassification cases. This model is supposed to be effective within a time frame of two years before a possible bankruptcy. Even considering a longer time frame, the companies located in the bankruptcy prediction area continued having misclassifications representing 57 % of error. The error for the model considering all cases and all areas, was 14 % of misclassification cases. This represented a high level of inefficiency of the model applied to an emerging country companies, such as Mexico.
Discussion or conclusion: the model is certainly effective while predicting companies in the areas of non-bankrupt sector and grey, but it was inefficient when predicting the possibility of bankruptcy. It was also demonstrated that the time frame of two years is no longer effective when applying the model to Mexican companies. As a result, more research cases are needed to update the model to perform efficiently in emerging countries including country-specific conditions and considering a different time frame to predict bankruptcy.