破产预测模型对预测评级有效吗?印度企业界对 Altman 模型的实证调查

Gurmeet Singh, Ravi Singla
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引用次数: 0

摘要

利用破产预测模型预测信用评级的替代方法是本文的主题。评级机构采用的评级方法极其复杂,各机构的评级方法也不尽相同,而且机构给出的评级在预测短期违约方面不太可靠,对信用事件的反应也很缓慢,2008 年危机期间机构的失败就证明了这一点。信用评级分配和破产预测都侧重于违约概率,但两者使用的方法有很大不同:公司破产预测模型预测的是公司整体未来的违约概率,而信用评级只能获取与特定工具相关的违约风险。因此,最好采用破产预测算法来获取公司的未来评级。本研究使用 Altman 框架来评估破产预测模型是否可用于提前获取公司的未来评级,结果发现破产预测模型可作为预测未来信用评级的替代方法,供投资者和银行用于做出更好的投资和借贷决策。
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Are Bankruptcy Prediction Models Effective for Predicting Ratings? An Empirical Investigation of Altman’s Model in Indian Corporate Sector
The alternative method for predicting credit ratings by employing bankruptcy prediction models is the main subject of the present article. Rating agencies utilize an extremely intricate rating methodology, which differs from agency to agency, and the ratings given by agencies are less reliable in anticipating short-term defaults and react slowly to credit events, as demonstrated by the failure of agencies during the crisis of 2008. Both credit rating assignment and bankruptcy prediction focused on the probability of default, but the methodology used by the two varies significantly: corporate bankruptcy prediction models predict the future default probability of a company as a whole, whereas credit rating only access the default risk associated with a specific instrument. Therefore, it is preferable to employ bankruptcy prediction algorithms to access a company’s future ratings. The present study used Altman’s framework in order to assess whether bankruptcy prediction models can be applied to access a company’s future ratings in advance or not and found that it can be used as an alternative method to predict the future credit ratings, which can be used by investors and banks to make better investment and lending decisions.
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