Aiming to estimate extreme precipitation forecast quantiles, we propose a nonparametric regression model that features a constant extreme value index. Using local linear quantile regression and an extrapolation technique from extreme value theory, we develop an estimator for conditional quantiles corresponding to extreme high probability levels. We establish uniform consistency and asymptotic normality of the estimators. In a simulation study, we examine the performance of our estimator on finite samples in comparison with a method assuming linear quantiles. On a precipitation data set in the Netherlands, these estimators have greater predictive skill compared to the upper member of ensemble forecasts provided by a numerical weather predict...
The estimation of extreme conditional quantiles is an important issue in different scientific discip...
International audienceThis paper is dedicated to the estimation of extreme quantiles and the tail in...
Statistical modelling for several years of daily temperature data is somewhat challenging due to rem...
Aiming to estimate extreme precipitation forecast quantiles, we propose a nonparametric regression m...
The estimation of extreme quantile curves of a family of conditional distributions is a non-trivial ...
Extreme quantile regression provides estimates of conditional quantiles outside the range of the dat...
In this thesis we develop several statistical methods to estimate high conditional quantiles to use ...
This paper studies the performance of nonparametric quantile regression as a tool to predict Value a...
Prediction of quantiles at extreme tails is of interest in numerous applications. Extreme value mode...
A framework is introduced allowing us to apply nonparametric quantile regression to Value at Risk (V...
AbstractMethods for estimating extreme loads are used in design as well as risk assessment. Regressi...
The estimation of extreme conditional quantiles is an important issue in different scientific discip...
Forecasts of extreme events are useful in order to prepare for disaster. Such forecasts are usefully...
The objective of the study is to use quantile regression to estimate extreme value events. The explo...
none3siWe propose a new framework exploiting realized measures of volatility to estimate and forecas...
The estimation of extreme conditional quantiles is an important issue in different scientific discip...
International audienceThis paper is dedicated to the estimation of extreme quantiles and the tail in...
Statistical modelling for several years of daily temperature data is somewhat challenging due to rem...
Aiming to estimate extreme precipitation forecast quantiles, we propose a nonparametric regression m...
The estimation of extreme quantile curves of a family of conditional distributions is a non-trivial ...
Extreme quantile regression provides estimates of conditional quantiles outside the range of the dat...
In this thesis we develop several statistical methods to estimate high conditional quantiles to use ...
This paper studies the performance of nonparametric quantile regression as a tool to predict Value a...
Prediction of quantiles at extreme tails is of interest in numerous applications. Extreme value mode...
A framework is introduced allowing us to apply nonparametric quantile regression to Value at Risk (V...
AbstractMethods for estimating extreme loads are used in design as well as risk assessment. Regressi...
The estimation of extreme conditional quantiles is an important issue in different scientific discip...
Forecasts of extreme events are useful in order to prepare for disaster. Such forecasts are usefully...
The objective of the study is to use quantile regression to estimate extreme value events. The explo...
none3siWe propose a new framework exploiting realized measures of volatility to estimate and forecas...
The estimation of extreme conditional quantiles is an important issue in different scientific discip...
International audienceThis paper is dedicated to the estimation of extreme quantiles and the tail in...
Statistical modelling for several years of daily temperature data is somewhat challenging due to rem...