利用市场指标来改进公司破产概率的估计

IF 3.4 3区 经济学 Q1 BUSINESS, FINANCE Financial Analysts Journal Pub Date : 2022-12-01 DOI:10.31107/2075-1990-2022-6-74-90
Daria S. Leonteva
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引用次数: 0

摘要

本研究探讨了一种估算违约概率的替代方法。将信用利差作为违约的市场指标引入基于会计的模型,试图增强仅分析资产负债表数据的经典方法模型的预测能力。本文确定了在破产预测模型的稳健性方面,信用利差的两种市场度量——z利差或i利差——哪一种具有优势。利用logistic回归和梯度增强机方法两种技术,以及385家发行公司债券的美国上市公司80个财务比率的年度序列样本,证明I-spread在这两种技术中都具有更高的预测能力。由于使用了不同的收益率曲线插值方法,因此Z-spread计算的准确性可能会产生误导,这可以解释为I-spread的较好表现。此外,还比较了所选技术的预测能力。最新的梯度增强机框架在测试样本上表现更好。这些发现可能会鼓励管理人员在分析中实施额外的市场特征,并应用现代技术而不是经典技术-逻辑回归和多重判别分析模型-来预测公司绩效的不一致性。
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Using Market Indicators to Refine Estimates of Corporate Bankruptcy Probabilities
This study investigates an alternative approach to estimating the probability of default. The introduction of credit spreads as market measures of default into an accounting-based model attempts to enhance the predictive power of classical approach models which analyze only balance sheet data. This paper identifies which of the two market measures of credit spread — the Z-spread or the I-spread — has an advantage in the context of robustness of the bankruptcy prediction models. Using two techniques — logistic regression and a gradient boosting machine approach, as well as a sample of annual series of 80 financial ratios for 385 U.S. listed companies which issue corporate bonds — evidence is obtained that the I-spread has higher predictive power in both techniques. The better performance of the I-spread can be explained by the fact that the accuracy of the Z-spread calculation can be misleading because different methods of interpolation of the yield curve are used. In addition, the predictive power of the chosen techniques is also compared. The up-to-date gradient boosting machine framework performs better on the test sample. These findings may encourage managers to implement additional market characteristics in the analysis and apply modern techniques rather than the classic ones — logistic regressions and multiple discriminant analyses models — to predict inconsistency in corporate performance.
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来源期刊
Financial Analysts Journal
Financial Analysts Journal BUSINESS, FINANCE-
CiteScore
5.40
自引率
7.10%
发文量
31
期刊介绍: The Financial Analysts Journal aims to be the leading practitioner journal in the investment management community by advancing the knowledge and understanding of the practice of investment management through the publication of rigorous, peer-reviewed, practitioner-relevant research from leading academics and practitioners.
期刊最新文献
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