Asyrofa Rahmi, Chia-chi Lu, Deron Liang, Ayu Nur Fadilah
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引用次数: 0
摘要
当一家公司无法在规定时间内履行其财务义务时,就会出现财务困境,这通常是由于公司长期经营业绩不佳所致。虽然有关财务困境预测(FDP)的研究使用财务比率(FRs)来预测困境,但它们忽视了长期(LT)属性与财务比率的区别。为了弥补这一不足,我们的研究引入了一个新模型,区分财务比率中的长期(LT)和短期(ST)会计属性。利用台湾上市公司的数据(1991-2018 年),我们提出的模型采用堆叠集合分类器来区分 LT 和 ST Altman 比率。本研究探讨了三个关键问题:(1)将 LT 和 ST 比率拆分的模型优于将它们合并的模型吗?(2) 这些拟议模型的可靠性和稳健性如何?(3) 提议的模型对困境预测有什么影响?结果表明,这些模型的准确性更高、I 类和 II 类误差更小、误分类成本更低,明显优于现有的解决方案。这些模型在处理不平衡数据时非常可靠,证明适用于实际市场调查。之前台湾研究中的多种 FR 情境验证了 LT 和 ST 特征之间的区别,体现了强大的性能。该模型识别了正确预测和错误预测企业困境的特征,为复杂的困境属性提供了细致入微的见解。本研究引入了一个开创性的模型,通过考虑 LT 和 ST 会计属性之间的差异,展示了卓越的预测准确性、可靠性和稳健性。它为未来研究扩展和完善所提出的模型奠定了基础,为了解财务困境的复杂动态提供了宝贵的见解。
Splitting long-term and short-term financial ratios for improved financial distress prediction: Evidence from Taiwanese public companies
Financial distress occurs when a company cannot meet its financial obligations within a specified timeframe, often owing to prolonged poor operational performance. While studies on financial distress prediction (FDP) use financial ratios (FRs) to forecast distress, they neglect to differentiate long-term (LT) attributes from FRs. To address this gap, our study introduces a novel model that distinguishes between LT and short-term (ST) accounting attributes in FRs. Using data from Taiwanese public companies (1991–2018), our proposed model employs a stacking ensemble classifier to split LT and ST Altman's ratios. This study addresses three key questions: (1) Do models involving split of LT and ST ratios outperform those that combine them? (2) How reliable and robust are these proposed models? (3) What is the proposed model's impact on distress prediction? The results show a significant outperformance of the existing solution, with higher accuracy, lower Type I and Type II errors, and reduced misclassification costs. These models are reliable in handling imbalanced data, proving suitable for real-market investigations. Diverse FR contexts from previous Taiwanese studies validate the distinction between LT and ST features, representing robust performance. This model identifies characteristics of correctly and incorrectly predicted distress in companies, providing nuanced insights into complex distress attributes. This study introduces a pioneering model demonstrating superior predictive accuracy, reliability, and robustness by considering the split between LT and ST accounting attributes. It lays a foundation for future studies to extend and refine the proposed model, offering valuable insights into the complex dynamics of FDP.
期刊介绍:
The Journal of Forecasting is an international journal that publishes refereed papers on forecasting. It is multidisciplinary, welcoming papers dealing with any aspect of forecasting: theoretical, practical, computational and methodological. A broad interpretation of the topic is taken with approaches from various subject areas, such as statistics, economics, psychology, systems engineering and social sciences, all encouraged. Furthermore, the Journal welcomes a wide diversity of applications in such fields as business, government, technology and the environment. Of particular interest are papers dealing with modelling issues and the relationship of forecasting systems to decision-making processes.