Journal of Applied Mathematics (Jan 2013)

Structural Credit Risk Models with Subordinated Processes

  • Martin Gurny,
  • Sergio Ortobelli Lozza,
  • Rosella Giacometti

DOI
https://doi.org/10.1155/2013/138272
Journal volume & issue
Vol. 2013

Abstract

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We discuss structural models based on Merton's framework. First, we observe that the classical assumptions of the Merton model are generally rejected. Secondly, we implement a structural credit risk model based on stable non-Gaussian processes as a representative of subordinated models in order to overcome some drawbacks of the Merton one. Finally, following the KMV-Merton estimation methodology, we propose an empirical comparison between the results obtained from the classical KMV-Merton model and the stable Paretian one. In particular, we suggest alternative parameter estimation for subordinated processes, and we optimize the performance for the stable Paretian model.