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Main Authors: Yoshida, Takuma, Umezu, Yuta
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2410.15705
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author Yoshida, Takuma
Umezu, Yuta
author_facet Yoshida, Takuma
Umezu, Yuta
contents One of the main topics of extreme value analysis is to estimate the extreme value index, an important parameter that controls the tail behavior of the distribution. In many cases, estimating the extreme value index of the target variable associated with covariates is useful. Although the estimation of the covariate-dependent extreme value index has been developed by numerous researchers, no results have been presented regarding covariate selection. This paper proposes a sure independence screening method for covariate-dependent extreme value index estimation. For the screening, the marginal utility between the target variable and each covariate is calculated using the conditional Pickands estimator. A single-index model that uses the covariates selected by screening is further provided to estimate the extreme value index after screening. Monte Carlo simulations confirmed the finite sample performance of the proposed method. In addition, a real-data application is presented.
format Preprint
id arxiv_https___arxiv_org_abs_2410_15705
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Variable screening for covariate dependent extreme value index estimation
Yoshida, Takuma
Umezu, Yuta
Methodology
One of the main topics of extreme value analysis is to estimate the extreme value index, an important parameter that controls the tail behavior of the distribution. In many cases, estimating the extreme value index of the target variable associated with covariates is useful. Although the estimation of the covariate-dependent extreme value index has been developed by numerous researchers, no results have been presented regarding covariate selection. This paper proposes a sure independence screening method for covariate-dependent extreme value index estimation. For the screening, the marginal utility between the target variable and each covariate is calculated using the conditional Pickands estimator. A single-index model that uses the covariates selected by screening is further provided to estimate the extreme value index after screening. Monte Carlo simulations confirmed the finite sample performance of the proposed method. In addition, a real-data application is presented.
title Variable screening for covariate dependent extreme value index estimation
topic Methodology
url https://arxiv.org/abs/2410.15705