泰国科技产业经营失败预测的逻辑回归模型

S. Puagwatana, K. Gunawardana
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引用次数: 5

摘要

由于企业倒闭或“经营失败”涉及的当事人众多,因此避免失败一直是企业财务和企业管理领域的一个重要问题。本文利用Altman模型中的四个变量,并在模型中加入一个变量,建立了预测泰国特别是科技行业企业失败的模型。使用描述性统计、相关性和独立t检验进行测试,以查看失败和未失败公司的每个变量的特征。采用逐步逻辑回归建立模型。样本是利用基于曼谷科技产业的私人有限公司的财务信息开发的。实证研究结果表明,财务比率是预测科技企业财务健康状况的有效分析方法。独立t检验的结果表明,销售额占总资产比率是唯一显著的自变量,表明失败组与未失败组之间存在显著差异。Nagelkerke R2显示结果变量的变异率为42.4%。模型的预测精度为77.8%,低于95%的置信水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Logistic Regression Model for Business Failures Prediction of Technology Industry in Thailand
Since the large number of parties involved in corporate failure or ‘business failure’, the avoidance of failure has always been an important issue in the field of corporate finance and business management. In this paper, the model was developed to predict business failure in Thailand particular in technology industry by using four variables from Altman’s model and adding one variable to the model. Descriptive statistics, correlation, and independent T-test are used for testing to see the characteristics of each variable on both failed and non-failed companies. The model was developed by using the stepwise logistic regression. Samples were developed by using financial information from private limited companies based on technology industry in Bangkok. The result from this empirical study can conclude that financial ratios are useful analytical techniques for forecasting financial health of companies in technology industry. The result of independent T-test has pointed out sales to total assets ratio is the only significant independent variable indicating significant differences between failed and non-failed group. The Nagelkerke R2 indicated 42.4% of the variation in the outcome variable. The predictability accuracy of the model is 77.8% which is under 95% confidence level.
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