Measuring credit risk using qualitative disclosure

成果类型:
Article
署名作者:
Donovan, John; Jennings, Jared; Koharki, Kevin; Lee, Joshua
署名单位:
University of Notre Dame; Washington University (WUSTL); Purdue University System; Purdue University; Brigham Young University
刊物名称:
REVIEW OF ACCOUNTING STUDIES
ISSN/ISSBN:
1380-6653
DOI:
10.1007/s11142-020-09575-4
发表日期:
2021
页码:
815-863
关键词:
DEFAULT SWAP SPREADS information-content empirical-analysis FINANCIAL RATIOS earnings debt methodologies conservatism uncertainty READABILITY
摘要:
We use machine learning methods to create a comprehensive measure of credit risk based on qualitative information disclosed in conference calls and in management's discussion and analysis section of the 10-K. In out-of-sample tests, we find that our measure improves the ability to predict credit events (bankruptcies, interest spreads, and credit rating downgrades), relative to credit risk measures developed by prior research (e.g., z-score). We also find our measure based on conference calls explains within-firm variation in future credit events; however, we find little evidence that the measures of credit risk developed by prior research explain within-firm variation in credit risk. Our measure has utility for both academics and practitioners, as the majority of firms do not have readily available measures of credit risk, such as actively-traded CDS or credit ratings. Our study also adds to the growing body of research using machine-learning methods to gather information from conference calls and MD&A to explain key outcomes.
来源URL: