International audienceNonparametric regression quantiles obtained by inverting a kernel estimator of the conditional distribution of the response are long established in statistics. Attention has been, however, restricted to ordinary quantiles staying away from the tails of the conditional distribution. The purpose of this paper is to extend their asymptotic theory far enough into the tails. We focus on extremal quantile regression estimators of a response variable given a vector of covariates in the general setting, whether the conditional extreme-value index is positive, negative, or zero. Specifically, we elucidate their limit distributions when they are located in the range of the data or near and even beyond the sample boundary, under ...
Nonparametric inference on tail conditional quantiles and their least squares analogs, expectiles, r...
Nonparametric inference on tail conditional quantiles and their least squares analogs, expectiles, r...
We consider the estimation of an extreme conditional quantile. In a first part, we propose a new tai...
Nonparametric regression quantiles obtained by inverting a kernel estimator of the conditional distr...
Nonparametric regression quantiles obtained by inverting a kernel estimator of the condi-tional dist...
Nonparametric regression quantiles obtained by inverting a kernel estimator of the conditional distr...
Parallel Session: Quantile regression (ES84) - Book of abstracts: http://www.cfe-csda.org/cfe12/BoA....
International audienceNonparametric regression quantiles obtained by inverting a kernel estimator of...
International audienceNonparametric regression quantiles obtained by inverting a kernel estimator of...
International audienceNonparametric regression quantiles can be obtained by inverting a kernel estim...
Nonparametric inference on tail conditional quantiles and their least squares analogs, expectiles, r...
International audienceWe address the estimation of extreme level curves of heavy-tailed distribution...
International audienceWe address the estimation of ''extreme'' conditional quantiles i.e. when their...
Nonparametric inference on tail conditional quantiles and their least squares analogs, expectiles, r...
Nonparametric inference on tail conditional quantiles and their least squares analogs, expectiles, r...
Nonparametric inference on tail conditional quantiles and their least squares analogs, expectiles, r...
Nonparametric inference on tail conditional quantiles and their least squares analogs, expectiles, r...
We consider the estimation of an extreme conditional quantile. In a first part, we propose a new tai...
Nonparametric regression quantiles obtained by inverting a kernel estimator of the conditional distr...
Nonparametric regression quantiles obtained by inverting a kernel estimator of the condi-tional dist...
Nonparametric regression quantiles obtained by inverting a kernel estimator of the conditional distr...
Parallel Session: Quantile regression (ES84) - Book of abstracts: http://www.cfe-csda.org/cfe12/BoA....
International audienceNonparametric regression quantiles obtained by inverting a kernel estimator of...
International audienceNonparametric regression quantiles obtained by inverting a kernel estimator of...
International audienceNonparametric regression quantiles can be obtained by inverting a kernel estim...
Nonparametric inference on tail conditional quantiles and their least squares analogs, expectiles, r...
International audienceWe address the estimation of extreme level curves of heavy-tailed distribution...
International audienceWe address the estimation of ''extreme'' conditional quantiles i.e. when their...
Nonparametric inference on tail conditional quantiles and their least squares analogs, expectiles, r...
Nonparametric inference on tail conditional quantiles and their least squares analogs, expectiles, r...
Nonparametric inference on tail conditional quantiles and their least squares analogs, expectiles, r...
Nonparametric inference on tail conditional quantiles and their least squares analogs, expectiles, r...
We consider the estimation of an extreme conditional quantile. In a first part, we propose a new tai...