Processes of rth Largest

Abstract

For integers n≥ r, we treat the rth largest of a sample of size n as an R∞-valued stochastic process in r which we denote M(r). We show that the sequence regarded in this way satisfies the Markov property. We go on to study the asymptotic behaviour of M(r) as r∞, and, borrowing from classical extreme value theory, show that left-tail domain of attraction conditions on the underlying distribution of the sample guarantee weak limits for both the range of M(r) and M(r) itself, after norming and centering. In continuous time, an analogous process Y(r)r based on a two-dimensional Poisson process on R+× R is treated similarly, but we find that the continuous time problems have a distinctive additional feature: there are always infinitely many points below the rth highest point up to time t for any t>0. This necessitates a different approach to the asymptotics in this case.

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