TY - JOUR
T1 - Endogenizing exogenous default barrier models
T2 - The MM algorithm
AU - Forte Arcos, S.
AU - Lovreta, Lidija
N1 - Funding Information:
This paper has been partially elaborated during the visit of Santiago Forte to the Department of Finance at Copenhagen Business School, and funded by Fundación UCEIF and Banco Santander. The authors also acknowledge financial support from Banco Sabadell (Santiago Forte) and Ministerio de Asuntos Exteriores y de Cooperación, y Agencia Española de Cooperación Internacional (MAEC-AECID) (Lidija Lovreta). The authors thank Carmen Ansotegui, Antonio Díaz, David Lando, Juan Mora, Juan Ignacio Peña, José Olmo, Rico von Wyss and an anonymous referee for their helpful suggestions, as well as seminar audiences at ESADE Business School, Copenhagen Business School, Universidad Pablo de Olavide, FMA 2010 European Conference, EFMA 2010 Annual Meeting, XVIII Finance Forum and 4th Workshop on Risk Management and Insurance for their comments. The usual disclaimers apply.
PY - 2012/6
Y1 - 2012/6
N2 - In this paper, we propose a Maximization-Maximization (MM) algorithm for the assessment of hidden parameters in structural credit risk models. Step M1 updates the value, volatility, and expected return on the firm's assets by maximizing the log-likelihood function for the time series of equity prices; Step M2 updates the default barrier by maximizing the equity holders' participation in the firm's asset value. The main contribution of the method lies in the M2 step, which allows for 'endogenizing' the default barrier in light of actual data on equity prices. Using a large international sample of companies, we demonstrate that theoretical credit spreads based on the MM algorithm offer the lowest CDS pricing errors when compared to other, traditional default barrier specifications: smooth-pasting condition value, maximum likelihood estimate, KMV's default point, and nominal debt.
AB - In this paper, we propose a Maximization-Maximization (MM) algorithm for the assessment of hidden parameters in structural credit risk models. Step M1 updates the value, volatility, and expected return on the firm's assets by maximizing the log-likelihood function for the time series of equity prices; Step M2 updates the default barrier by maximizing the equity holders' participation in the firm's asset value. The main contribution of the method lies in the M2 step, which allows for 'endogenizing' the default barrier in light of actual data on equity prices. Using a large international sample of companies, we demonstrate that theoretical credit spreads based on the MM algorithm offer the lowest CDS pricing errors when compared to other, traditional default barrier specifications: smooth-pasting condition value, maximum likelihood estimate, KMV's default point, and nominal debt.
KW - Hidden parameters
KW - Iterative algorithm
KW - Structural credit risk models
UR - http://www.scopus.com/inward/record.url?scp=84859640991&partnerID=8YFLogxK
U2 - 10.1016/j.jbankfin.2012.01.010
DO - 10.1016/j.jbankfin.2012.01.010
M3 - Article
AN - SCOPUS:84859640991
SN - 0378-4266
VL - 36
SP - 1639
EP - 1652
JO - Journal of Banking and Finance
JF - Journal of Banking and Finance
IS - 6
ER -