We introduce a non-parametric robust and asymptotically unbiased estimator for the tail index of a conditional Pareto-type response distribution in presence of random covariates. The estimator is obtained from local fits of the extended Pareto distribution to the relative excesses over a high threshold using an adjusted minimum density power divergence estimation technique. We derive the asymptotic properties of the proposed estimator under some mild regularity conditions, and also investigate its finite sample performance with a small simulation experiment. The practical applicability of the methodology is illustrated on a dataset of calcium content measurements of soil samples.status: publishe
International audienceFor heavy-tailed distributions, the so-called tail index is an important param...
Estimation of the Pareto tail index from extreme order statistics is an important problem in many se...
We consider bias-reduced estimation of the extreme value index in conditional Pareto-type models wit...
We propose a nonparametric robust estimator for the tail index of a conditional Pareto-type distribu...
We propose a nonparametric robust estimator for the tail index of a conditional Pareto-type distribu...
We introduce a robust and asymptotically unbiased estimator for the tail index of Pareto-type distri...
AbstractWe present a nonparametric family of estimators for the tail index of a Pareto-type distribu...
International audienceWe study nonparametric robust tail coefficient estimation when the variable of...
Rapport de rechercheInternational audienceWe present a nonparametric family of estimators for the ta...
In extreme value statistics, the extreme value index is a well-known parameter to measure the tail h...
We discuss the estimation of the tail index of a heavy-tailed distribution when covariate informatio...
We consider robust and nonparametric estimation of the coefficient of tail dependence in presence of...
AbstractWe discuss the estimation of the tail index of a heavy-tailed distribution when covariate in...
In extreme value statistics, the extreme value index is a well-known parameter to measure the tail h...
We introduce a location-scale model for conditional heavy-tailed distributions when the covariate is...
International audienceFor heavy-tailed distributions, the so-called tail index is an important param...
Estimation of the Pareto tail index from extreme order statistics is an important problem in many se...
We consider bias-reduced estimation of the extreme value index in conditional Pareto-type models wit...
We propose a nonparametric robust estimator for the tail index of a conditional Pareto-type distribu...
We propose a nonparametric robust estimator for the tail index of a conditional Pareto-type distribu...
We introduce a robust and asymptotically unbiased estimator for the tail index of Pareto-type distri...
AbstractWe present a nonparametric family of estimators for the tail index of a Pareto-type distribu...
International audienceWe study nonparametric robust tail coefficient estimation when the variable of...
Rapport de rechercheInternational audienceWe present a nonparametric family of estimators for the ta...
In extreme value statistics, the extreme value index is a well-known parameter to measure the tail h...
We discuss the estimation of the tail index of a heavy-tailed distribution when covariate informatio...
We consider robust and nonparametric estimation of the coefficient of tail dependence in presence of...
AbstractWe discuss the estimation of the tail index of a heavy-tailed distribution when covariate in...
In extreme value statistics, the extreme value index is a well-known parameter to measure the tail h...
We introduce a location-scale model for conditional heavy-tailed distributions when the covariate is...
International audienceFor heavy-tailed distributions, the so-called tail index is an important param...
Estimation of the Pareto tail index from extreme order statistics is an important problem in many se...
We consider bias-reduced estimation of the extreme value index in conditional Pareto-type models wit...