International audienceWe consider a location-dispersion regression model for heavy-tailed distributions when the multidimensional covariate is deterministic. In a first step, nonparametric estimators of the regression and dispersion functions are introduced. This permits, in a second step, to derive an estimator of the conditional extreme-value index computed on the residuals. Finally, a plug-in estimator of extreme conditional quantiles is built using these two preliminary steps. It is shown that the resulting semi-parametric estimator is asymptotically Gaussian and may benefit from the same rate of convergence as in the unconditional situation. Its finite sample properties are illustrated both on simulated and real tsunami data
Abstract − We address the estimation of quantiles from heavy-tailed dis-tributions when functional c...
This paper deals with extreme-value index estimation of a heavy-tailed distribution of a spatial dep...
International audienceNonparametric regression quantiles obtained by inverting a kernel estimator of...
International audienceWe consider a location-dispersion regression model for heavy-tailed distributi...
National audienceThe modeling of extreme events arises in many fields such as finance, insurance or ...
International audienceWe are interested in a location-scale model for heavy-tailed distributions whe...
International audienceWe introduce a location-scale model for conditional heavy-tailed distributions...
International audienceWe address the estimation of extreme level curves of heavy-tailed distribution...
The estimation of extreme conditional quantiles is an important issue in different scientific discip...
International audienceWe address the estimation of extreme level curves of heavy-tailed distribution...
Nonparametric inference on tail conditional quantiles and their least squares analogs, expectiles, r...
International audienceThis paper is dedicated to the estimation of extreme quantiles and the tail in...
The estimation of extreme conditional quantiles is an important issue in different scientific discip...
The main goal of this thesis is to propose new estimators of the tail-index as well as the condition...
AbstractWe address the estimation of quantiles from heavy-tailed distributions when functional covar...
Abstract − We address the estimation of quantiles from heavy-tailed dis-tributions when functional c...
This paper deals with extreme-value index estimation of a heavy-tailed distribution of a spatial dep...
International audienceNonparametric regression quantiles obtained by inverting a kernel estimator of...
International audienceWe consider a location-dispersion regression model for heavy-tailed distributi...
National audienceThe modeling of extreme events arises in many fields such as finance, insurance or ...
International audienceWe are interested in a location-scale model for heavy-tailed distributions whe...
International audienceWe introduce a location-scale model for conditional heavy-tailed distributions...
International audienceWe address the estimation of extreme level curves of heavy-tailed distribution...
The estimation of extreme conditional quantiles is an important issue in different scientific discip...
International audienceWe address the estimation of extreme level curves of heavy-tailed distribution...
Nonparametric inference on tail conditional quantiles and their least squares analogs, expectiles, r...
International audienceThis paper is dedicated to the estimation of extreme quantiles and the tail in...
The estimation of extreme conditional quantiles is an important issue in different scientific discip...
The main goal of this thesis is to propose new estimators of the tail-index as well as the condition...
AbstractWe address the estimation of quantiles from heavy-tailed distributions when functional covar...
Abstract − We address the estimation of quantiles from heavy-tailed dis-tributions when functional c...
This paper deals with extreme-value index estimation of a heavy-tailed distribution of a spatial dep...
International audienceNonparametric regression quantiles obtained by inverting a kernel estimator of...