A Two-Stage Probit Model for Predicting Recovery Rates

被引:0
作者
Ruey-Ching Hwang
Huimin Chung
C. K. Chu
机构
[1] National Dong Hwa University,Department of Finance
[2] National Chiao Tung University,Graduate Institute of Finance
[3] National Dong Hwa University,Department of Applied Mathematics
来源
Journal of Financial Services Research | 2016年 / 50卷
关键词
Expanding rolling window approach; Ordered probit model; Probit transformation regression; Two-stage probit model; Recovery rate; G21; G28;
D O I
暂无
中图分类号
学科分类号
摘要
We propose a two-stage probit model (TPM) to predict recovery rates. By the ordinal nature of the three categories of recovery rates: total loss, total recovery, and lying between the two extremes, we first use the ordered probit model to predict the category that a given debt belongs to among the three ones. Then, for the debt that is classified as lying between the two extremes, we use the probit transformation regression to predict its recovery rate. We use real data sets to support TPM. Our empirical results show that macroeconomic-, debt-, firm-, and industry-specific variables are all important in determining recovery rates. Using an expanding rolling window approach, our empirical results confirm that TPM has better and more robust out-of-sample performance than its alternatives, in the sense of yielding more accurate predicted recovery rates.
引用
收藏
页码:311 / 339
页数:28
相关论文
共 72 条
[1]  
Acharya VV(2007)Does industrywide distress affect defaulted firms? Evidence from creditor recoveries J Financ Econ 85 787-821
[2]  
Bharath ST(1957)The generalization of probit analysis to the case of multiple responses Biometrika 44 131-140
[3]  
Srinivasan A(1968)Financial ratios, discriminant analysis, and the prediction of corporate bankruptcy J Financ 23 589-609
[4]  
Aitchison J(2014)Ultimate recovery mixtures J Bank Financ 40 116-129
[5]  
Silvey SD(1996)Almost everything you wanted to know about recoveries on defaulted bonds Financ Anal J 52 57-64
[6]  
Altman E(2005)Extensions to the Gaussian copula: random recovery and random factor loadings J Credit Risk 1 29-70
[7]  
Altman E(1995)Measuring loss on default bank loans: a 24-year study J Commerc Lending 77 11-23
[8]  
Kalotay EA(2010)Forecasting bank loans loss-given-default J Bank Financ 34 2510-2517
[9]  
Altman E(1996)Bankruptcy classification errors in the 1980s: an empirical analysis of Altman’s and Ohlson’s models Rev Acc Stud 1 267-284
[10]  
Kishore VM(2012)Loss given default models incorporating macroeconomic variables for credit cards Int J Forecast 28 171-182