A monotone estimate of the conditional variance function in a heteroscedastic, nonparametric regression model is proposed. The method is based on the application of a kernel density estimate to an unconstrained estimate of the variance function and yields an estimate of the inverse variance function. The final monotone estimate of the variance function is obtained by an inversion of this function. The method is applicable to a broad class of nonparametric estimates of the conditional variance and particularly attractive to users of conventional kernel methods, because it does not require constrained optimization techniques. The approach is also illustrated by means of a simulation study
In the first essay, we investigate the nonlinear quantile regression with mixed discrete and continu...
The first chapter proposes an alternative (`dual regression') to the quantile regression process for...
Conditional heteroscedasticity has been often used in modelling and understanding the variability of...
Nonparametric regression, Heteroscedasticity, Variance function, Monotonicity, Order restricted infe...
In this paper a new method for monotone estimation of a regression function is proposed. The estimat...
In a recent paper Dette, Neumeyer and Pilz (2005) proposed a new nonparametric estimate of a monoto...
We suggest a method for monotonizing general kernel-type estimators, for example local linear estima...
There has been considerable attention paid to estimation of conditional valiance functions In the li...
The thesis studies variance function estimation in nonparametric regression model. It focuses on loc...
this paper we consider a nonparametric regres-sion model in which the conditional variance function ...
The main objective of this paper is to estimate the conditional cumulative distribution using the no...
We consider estimation of mean and variance functions with kernel-weighted local polynomial fitting ...
Recently, Dette, Neumeyer and Pilz (2005a) proposed a new monotone estimator for strictly increasing...
This paper proposes a novel positive nonparametric estimator of the conditional variance function wi...
The paper proposes two Bayesian approaches to non-parametric monotone function estimation. The first...
In the first essay, we investigate the nonlinear quantile regression with mixed discrete and continu...
The first chapter proposes an alternative (`dual regression') to the quantile regression process for...
Conditional heteroscedasticity has been often used in modelling and understanding the variability of...
Nonparametric regression, Heteroscedasticity, Variance function, Monotonicity, Order restricted infe...
In this paper a new method for monotone estimation of a regression function is proposed. The estimat...
In a recent paper Dette, Neumeyer and Pilz (2005) proposed a new nonparametric estimate of a monoto...
We suggest a method for monotonizing general kernel-type estimators, for example local linear estima...
There has been considerable attention paid to estimation of conditional valiance functions In the li...
The thesis studies variance function estimation in nonparametric regression model. It focuses on loc...
this paper we consider a nonparametric regres-sion model in which the conditional variance function ...
The main objective of this paper is to estimate the conditional cumulative distribution using the no...
We consider estimation of mean and variance functions with kernel-weighted local polynomial fitting ...
Recently, Dette, Neumeyer and Pilz (2005a) proposed a new monotone estimator for strictly increasing...
This paper proposes a novel positive nonparametric estimator of the conditional variance function wi...
The paper proposes two Bayesian approaches to non-parametric monotone function estimation. The first...
In the first essay, we investigate the nonlinear quantile regression with mixed discrete and continu...
The first chapter proposes an alternative (`dual regression') to the quantile regression process for...
Conditional heteroscedasticity has been often used in modelling and understanding the variability of...