On the construction of low-parametric families of min-stable multivariate exponential distributions in large dimensions
Document type:
Zeitschriftenaufsatz
Author(s):
Bernhart, G.; Mai, J.-F.; Scherer, M.
Non-TUM Co-author(s):
ja
Cooperation:
international
Abstract:
Min-stable multivariate exponential (MSMVE) distributions constitute an important family of distributions,
among others due to their relation to extreme-value distributions. Being true multivariate exponential
models, they also represent a natural choicewhen modeling default times in credit portfolios. Despite
being well-studied on an abstract level, the number of known parametric families is small. Furthermore, for
most families only implicit stochastic representations are known. The present paper develops new parametric
families of MSMVE distributions in arbitrary dimensions. Furthermore, a convenient stochastic representation
is stated for such models, which is helpful with regard to sampling strategies.
«
Min-stable multivariate exponential (MSMVE) distributions constitute an important family of distributions,
among others due to their relation to extreme-value distributions. Being true multivariate exponential
models, they also represent a natural choicewhen modeling default times in credit portfolios. Despite
being well-studied on an abstract level, the number of known parametric families is small. Furthermore, for
most families only implicit stochastic representations are known. The presen...
»