Bounding the Maximum of Dependent Random Variables
Statistics Theory
2013-12-05 v1 Statistics Theory
Abstract
Let be the maximum of zero-mean gaussian variables with covariance matrix of minimum eigenvalue and maximum eigenvalue . Then, for , Bounds are also given for tail probabilities other than . Upper bounds are given for tail probabilities of the maximum of dependent identically distributed variables. As an application, the maximum of purely non-deterministic stationary Gaussian processes is shown to have the same first order asymptotic behaviour as the maximum of independent gaussian processes.
Cite
@article{arxiv.1312.1207,
title = {Bounding the Maximum of Dependent Random Variables},
author = {J. A. Hartigan},
journal= {arXiv preprint arXiv:1312.1207},
year = {2013}
}