Recently, Dette, Neumeyer and Pilz (2005a) proposed a new monotone estimator for strictly increasing nonparametric regression functions and proved asymptotic normality. We explain two modifications of their method that can be used to obtain monotone versions of any nonparametric function estimators, for instance estimators of densities, variance functions or hazard rates. The method is appealing to practitioners because they can use their favorite method of function estimation (kernel smoothing, wavelets, orthogonal series,...) and obtain a monotone estimator that inherits desirable properties of the original estimator. In particular, we show that both monotone estimators share the same rates of uniform convergence (almost sure or in proba...
A new uniform expansion is introduced for sums of weighted kernel-based regression residuals from n...
In the linear regression quantile model, the conditional quantile of the response, Y, given x is QY|...
A monotone estimate of the conditional variance function in a heteroscedastic, nonparametric regress...
Recently, Dette et al. [A simple nonparametric estimator of a strictly increasing regression functio...
In a recent paper Dette, Neumeyer and Pilz (2005) proposed a new nonparametric estimate of a monoto...
In this paper a new method for monotone estimation of a regression function is proposed. The estimat...
We suggest a method for monotonizing general kernel-type estimators, for example local linear estima...
This paper studies the estimation of L[infinity]-best monotone approximations to a - known or unknow...
Thesis (Ph.D.)--University of Washington, 2018In this dissertation, we study general strategies for ...
We propose several new tests for monotonicity of regression functions based on different empirical ...
In many problems, a sensible estimator of a possibly multivariate monotone function may fail to be m...
We investigate the interplay of smoothness and monotonicity assumptions when estimating a density fr...
The monotone rearrrangement algorithm was introduced by Hardy, Littlewood and Po ́lya as a sorting d...
Nonparametric estimation of the mode of a density or regression function via kernel methods is consi...
The ill-posedness of the inverse problem of recovering a regression function in a nonparametric inst...
A new uniform expansion is introduced for sums of weighted kernel-based regression residuals from n...
In the linear regression quantile model, the conditional quantile of the response, Y, given x is QY|...
A monotone estimate of the conditional variance function in a heteroscedastic, nonparametric regress...
Recently, Dette et al. [A simple nonparametric estimator of a strictly increasing regression functio...
In a recent paper Dette, Neumeyer and Pilz (2005) proposed a new nonparametric estimate of a monoto...
In this paper a new method for monotone estimation of a regression function is proposed. The estimat...
We suggest a method for monotonizing general kernel-type estimators, for example local linear estima...
This paper studies the estimation of L[infinity]-best monotone approximations to a - known or unknow...
Thesis (Ph.D.)--University of Washington, 2018In this dissertation, we study general strategies for ...
We propose several new tests for monotonicity of regression functions based on different empirical ...
In many problems, a sensible estimator of a possibly multivariate monotone function may fail to be m...
We investigate the interplay of smoothness and monotonicity assumptions when estimating a density fr...
The monotone rearrrangement algorithm was introduced by Hardy, Littlewood and Po ́lya as a sorting d...
Nonparametric estimation of the mode of a density or regression function via kernel methods is consi...
The ill-posedness of the inverse problem of recovering a regression function in a nonparametric inst...
A new uniform expansion is introduced for sums of weighted kernel-based regression residuals from n...
In the linear regression quantile model, the conditional quantile of the response, Y, given x is QY|...
A monotone estimate of the conditional variance function in a heteroscedastic, nonparametric regress...