Limit distributions for the maxima of stationary Gaussian processes |
| |
Authors: | Y. Mittal D. Ylvisaker |
| |
Affiliation: | Institute for Advanced Study, Princeton, N.J. 08540, U.S.A.;University of California, Los Angeles, Calif. 90024, U.S.A. |
| |
Abstract: | Let {Xn} be a stationary Gaussian sequence with E{X0} = 0, {X20} = 1 and E{X0Xn} = rnn Let cn = (2ln n), bn = cn? c-1n ln(4π ln n), and set Mn = max0 ?k?nXk. A classical result for independent normal random variables is that Berman has shown that (1) applies as well to dependent sequences provided rnlnn = o(1). Suppose now that {rn} is a convex correlation sequence satisfying rn = o(1), (rnlnn)-1 is monotone for large n and o(1). Then for all x, where Ф is the normal distribution function. While the normal can thus be viewed as a second natural limit distribution for {Mn}, there are others. In particular, the limit distribution is given below when rn is (sufficiently close to) γ/ln n. We further exhibit a collection of limit distributions which can arise when rn decays to zero in a nonsmooth manner. Continuous parameter Gaussian processes are also considered. A modified version of (1) has been given by Pickands for some continuous processes which possess sufficient asymptotic independence properties. Under a weaker form of asymptotic independence, we obtain a version of (2). |
| |
Keywords: | Primary 60G10, 60G15 Secondary 60F99 |
本文献已被 ScienceDirect 等数据库收录! |
|