Article ID: | iaor2016765 |
Volume: | 67 |
Issue: | 3 |
Start Page Number: | 393 |
End Page Number: | 401 |
Publication Date: | Mar 2016 |
Journal: | Journal of the Operational Research Society |
Authors: | Janssen Jacques, Manca Raimondo, DAmico Guglielmo |
Keywords: | government, markov processes, simulation, programming: dynamic, economics |
International organizations evaluate credit risk and rank firms according to risk by assigning them a ‘rating’. The time evolution of a rating can be studied by means of Markov models. Some papers have outlined the problem pertaining to the unsuitable fitting of Markov processes in a credit risk environment. This paper presents a model that overcomes the problems given by the Markov rating models. It includes non‐homogeneity, the downward problem and the randomness of time in the transitions of states, thus making it possible to consider the duration inside a state in a complete way. In this paper, both, the transient and asymptotic analyses are presented. The asymptotic analysis is performed by using a mono‐unireducible topological structure. Moreover, a real data application is conducted using the historical database of Standard & Poor’s as the source.