<p>We focus on the construction of confidence corridors for multivariate nonparametric generalized quantile regression functions. This construction is based on asymptotic results for the maximal deviation between a suitable nonparametric estimator and the true function of interest, which follow after a series of approximation steps including a Bahadur representation, a new strong approximation theorem, and exponential tail inequalities for Gaussian random fields. As a byproduct we also obtain multivariate confidence corridors for the regression function in the classical mean regression. To deal with the problem of slowly decreasing error in coverage probability of the asymptotic confidence corridors, which results in meager coverage for sma...
The thesis deals with a new approach to construction of confidence regions for multivariate random v...
In the present work we generalize the univariate M-quantile regression to the analysis of multivaria...
Quantile regression offers an extension to regression analysis where a modified version of the least...
We focus on the construction of confidence corridors for multivariate nonparametric generalized quan...
We focus on the construction of confidence corridors for multivariate nonparametric generalized quan...
Let ( X1 , Y 1), …, ( X, Y ) be independent and identically distributed random variables and let l (...
AbstractIn this paper bootstrap confidence bands are constructed for nonparametric quantile estimate...
We explore a particular fully parametric approach to quantile regression and show that this approach...
Quantiles, which are also known as values-at-risk in finance, frequently arise in practice as measur...
In this paper uniform confidence bands are constructed for nonparametric quantile estimates of regre...
AbstractThe asymptotic consistency of the bootstrap approximation of the vector of the marginal gene...
We describe and compare methods for constructing confidence intervals for quantile regression coeffi...
This publication is with permission of the rights owner freely accessible due to an Alliance licence...
The nonparametric empirical likelihood approach is used to obtain simultaneous confidence tubes for ...
Local kernel estimates and B-spline estimates are considered in the nonparametric regression and the...
The thesis deals with a new approach to construction of confidence regions for multivariate random v...
In the present work we generalize the univariate M-quantile regression to the analysis of multivaria...
Quantile regression offers an extension to regression analysis where a modified version of the least...
We focus on the construction of confidence corridors for multivariate nonparametric generalized quan...
We focus on the construction of confidence corridors for multivariate nonparametric generalized quan...
Let ( X1 , Y 1), …, ( X, Y ) be independent and identically distributed random variables and let l (...
AbstractIn this paper bootstrap confidence bands are constructed for nonparametric quantile estimate...
We explore a particular fully parametric approach to quantile regression and show that this approach...
Quantiles, which are also known as values-at-risk in finance, frequently arise in practice as measur...
In this paper uniform confidence bands are constructed for nonparametric quantile estimates of regre...
AbstractThe asymptotic consistency of the bootstrap approximation of the vector of the marginal gene...
We describe and compare methods for constructing confidence intervals for quantile regression coeffi...
This publication is with permission of the rights owner freely accessible due to an Alliance licence...
The nonparametric empirical likelihood approach is used to obtain simultaneous confidence tubes for ...
Local kernel estimates and B-spline estimates are considered in the nonparametric regression and the...
The thesis deals with a new approach to construction of confidence regions for multivariate random v...
In the present work we generalize the univariate M-quantile regression to the analysis of multivaria...
Quantile regression offers an extension to regression analysis where a modified version of the least...