On the rate of convergence for extremes of mean square differentiable stationary normal processes
- 1 December 1997
- journal article
- Published by Cambridge University Press (CUP) in Journal of Applied Probability
- Vol. 34 (4) , 908-923
- https://doi.org/10.2307/3215006
Abstract
Let ξ (t); t ≧ 0 be a normalized continuous mean square differentiable stationary normal process with covariance function r(t). Further, let and set . We give bounds which are roughly of order Τ –δ for the rate of convergence of the distribution of the maximum and of the number of upcrossings of a high level by ξ (t) in the interval [0, T]. The results assume that r(t) and r′(t) decay polynomially at infinity and that r″ (t) is suitably bounded. For the number of upcrossings it is in addition assumed that r(t) is non-negative.Keywords
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