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Auteurs principaux: Bücher, Axel, Haufs, Erik
Format: Preprint
Publié: 2025
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Accès en ligne:https://arxiv.org/abs/2502.15036
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author Bücher, Axel
Haufs, Erik
author_facet Bücher, Axel
Haufs, Erik
contents Extreme value analysis for time series is often based on the block maxima method, in particular for environmental applications. In the classical univariate case, the latter is based on fitting an extreme-value distribution to the sample of (annual) block maxima. Mathematically, the target parameters of the extreme-value distribution also show up in limit results for other high order statistics, which suggests estimation based on blockwise large order statistics. It is shown that a naive approach based on maximizing an independence log-likelihood yields an estimator that is inconsistent in general. A consistent, bias-corrected estimator is proposed, and is analyzed theoretically and in finite-sample simulation studies. The new estimator is shown to be more efficient than traditional counterparts, for instance for estimating large return levels or return periods.
format Preprint
id arxiv_https___arxiv_org_abs_2502_15036
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Extreme Value Analysis based on Blockwise Top-Two Order Statistics
Bücher, Axel
Haufs, Erik
Statistics Theory
Extreme value analysis for time series is often based on the block maxima method, in particular for environmental applications. In the classical univariate case, the latter is based on fitting an extreme-value distribution to the sample of (annual) block maxima. Mathematically, the target parameters of the extreme-value distribution also show up in limit results for other high order statistics, which suggests estimation based on blockwise large order statistics. It is shown that a naive approach based on maximizing an independence log-likelihood yields an estimator that is inconsistent in general. A consistent, bias-corrected estimator is proposed, and is analyzed theoretically and in finite-sample simulation studies. The new estimator is shown to be more efficient than traditional counterparts, for instance for estimating large return levels or return periods.
title Extreme Value Analysis based on Blockwise Top-Two Order Statistics
topic Statistics Theory
url https://arxiv.org/abs/2502.15036