A hybrid KMV model, random forests and rough set theory approach for credit rating

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摘要

In current credit ratings models, various accounting-based information are usually selected as prediction variables, based on historical information rather than the market’s assessment for future. In the study, we propose credit rating prediction model using market-based information as a predictive variable. In the proposed method, Moody’s KMV (KMV) is employed as a tool to evaluate the market-based information of each corporation. To verify the proposed method, using the hybrid model, which combine random forests (RF) and rough set theory (RST) to extract useful information for credit rating. The results show that market-based information does provide valuable information in credit rating predictions. Moreover, the proposed approach provides better classification results and generates meaningful rules for credit ratings.

论文关键词:Credit rating,KMV model,Rough set theory,Random forests,Distance to default

论文评审过程:Received 22 October 2011, Revised 13 February 2012, Accepted 2 April 2012, Available online 12 April 2012.

论文官网地址:https://doi.org/10.1016/j.knosys.2012.04.004