Extremal clustering under moderate long range dependence and moderately heavy tails
Extremal clustering under moderate long range dependence and moderately heavy tails
We study clustering of the extremes in a stationary sequence with subexponential tails in the maximum domain of attraction of the Gumbel We obtain functional limit theorems in the space of random sup-measures and in the space $D(0,\infty)$. The limits have the Gumbel distribution if the memory is only moderately long. However, as our results demonstrate rather strikingly, the "heuristic of a single big jump" could fail even in a moderately long range dependence setting. As the tails become lighter, the extremal behavior of a stationary process may depend on multiple large values of the driving noise.
Gennady Samorodnitsky、Zaoli Chen
数学
Gennady Samorodnitsky,Zaoli Chen.Extremal clustering under moderate long range dependence and moderately heavy tails[EB/OL].(2020-03-10)[2025-08-02].https://arxiv.org/abs/2003.05038.点此复制
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