Usual stochastic ordering of the sample maxima from dependent distribution‐free random variables
Citations Over Time
Abstract
In this paper, we discuss stochastic comparison of the largest order statistics arising from two sets of dependent distribution‐free random variables with respect to multivariate chain majorization, where the dependency structure can be defined by Archimedean copulas. When a distribution‐free model with possibly two parameter vectors has its matrix of parameters changing to another matrix of parameters in a certain mathematical sense, we obtain the first sample maxima is larger than the second sample maxima with respect to the usual stochastic order, based on certain conditions. Applications of our results for scale proportional reverse hazards model, exponentiated gamma distribution, Gompertz–Makeham distribution, and location‐scale model, are also given. Meanwhile, we provide two numerical examples to illustrate the results established here.
Related Papers
- → Ordering results for the smallest and largest order statistics from independent heterogeneous exponential–Weibull random variables(2016)23 cited
- → Ordering Results on Largest Order Statistics from Multiple-Outlier Gamma Variables(2022)1 cited
- → A new notion of majorization with applications to the comparison of extreme order statistics(2017)1 cited
- → Some ordering properties of highest and lowest order statistics with exponentiated Gumble type-II distributed components(2019)1 cited
- → Some new ordering results on stochastic comparisons of second largest order statistics from independent and interdependent heterogeneous distributions(2021)