Limit distributions of the upper order statistics for the Levy-frailty Marshall-Olkin distribution
Keywords: reliability, Marshall-Olkin distribution, Dependent random variables, Upper order statistics, Extreme-value theory
Abstract
The Marshall-Olkin (MO) distribution is considered a key model in reliability theory and in risk analysis, where it is used to model the lifetimes of dependent components or entities of a system and dependency is induced by “shocks” that hit one or more components at a time. Of particular inter- est is the L ́evy-frailty subfamily of the Marshall-Olkin (LFMO) distribution, since it has few parameters and because the nontrivial dependency structure is driven by an underlying L ́evy subordinator process. The main contribution of this work is that we derive the precise asymptotic behavior of the upper order statistics of the LFMO distribution. More specifically, we consider a sequence of n univariate random variables jointly distributed as a multivariate LFMO distribution and analyze the order statistics of the sequence as n grows. Our main result states that if the underlying Lévy subordinator is in the normal do- main of attraction of a stable distribution with index of stability α then, after certain logarithmic centering and scaling, the upper order statistics converge in distribution to a stable distribution if α > 1 or a simple transformation of it if α ≤ 1. Our result can also give easily computable confidence intervals for the last failure times, provided that a proper convergence analysis is carried out first.
Más información
Título de la Revista: | EXTREMES |
Volumen: | - |
Número: | - |
Editorial: | Springer |
Fecha de publicación: | 2020 |
Idioma: | English |
Notas: | WOS IF 2019: 1.136 WOS IF 5 years: 1.325 https://www.springer.com/journal/10687/ |