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Financial distress and bankruptcy prediction among listed companies using accounting, market and macroeconomic variables

机译:使用会计,市场和宏观经济变量的上市公司财务困境和破产预测

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Using a sample of 23,218 company-year observations of listed companies during the period 1980-2011, the paper investigates empirically the utility of combining accounting, market-based and macro-economic data to explain corporate credit risk. The paper develops risk models for listed companies that predict financial distress and bankruptcy. The estimated models use a combination of accounting data, stock market information and proxies for changes in the macro-economic environment. The purpose is to produce models with predictive accuracy, practical value and macro dependent dynamics that have relevance for stress testing. The results show the utility of combining accounting, market and macro-economic data in financial distress prediction models for listed companies. The performance of the estimated models is benchmarked against models built using a neural network (MLP) and against Altman's (1968) original Z-score specification.
机译:本文使用1980-2011年间23,218家对上市公司的公司年度观察数据作为样本,通过实证研究了结合会计,基于市场和宏观经济数据来解释公司信用风险的效用。本文为预测财务困境和破产的上市公司开发了风险模型。估计的模型结合使用了会计数据,股票市场信息和代理以应对宏观经济环境的变化。目的是产生具有预测准确性,实用价值和与宏观相关的动力学的模型,这些模型与压力测试相关。结果表明,结合会计,市场和宏观经济数据在上市公司财务困境预测模型中的实用性。估计模型的性能以使用神经网络(MLP)构建的模型和奥特曼(1968)的原始Z评分规范为基准。

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