Estimators for derivatives associated with a density function can be useful in identifying its modes and inflection points. In addition, these estimators play an important role in plug-in methods associated with bandwidth selection in nonparametric kernel density estimation. In this paper we extend the nonparametric class of density estimators proposed by Mynbaev and Martins Filho (2010) to the estimation of $m$-order density derivatives. Contrary to some existing derivative estimators, the estimators in our proposed class have a full asymptotic characterization, including uniform consistency and asymptotic normality. An expression for the bandwidth that minimizes an asymptotic approximation for the estimators' integrated squared error is ...
This thesis investigates higher order asymptotic properties of a semiparametric averaged derivative ...
New nonparametric procedure for estimating the probability density function of a positive random var...
A class of kernel type density estimators with locally varying bandwidth is introduced. This class c...
Estimators for derivatives associated with a density function can be useful in identifying its modes...
In this paper we propose a new nonparametric kernel based estimator for a density function $f$ which...
We investigate kernel estimators of multivariate density derivative functions using general (or unco...
AbstractThe problem of nonparametric estimation of a multivariate density function is addressed. In ...
AbstractEstimating the density function of a random vector taking values on the d-dimensional unit s...
AbstractWe consider a problem of nonparametric density estimation under shape restrictions. We deal ...
In this paper, we derive the asymptotic properties of the density-weighted average derivative estima...
In this paper, we consider the problem of estimating the d-order derivative of a density f, relying ...
Kernal density estimators are used for estimation of integrals of various squared derivatives of a p...
Abstract. In [ 5] we have announced a h e a r spllne method for nonparametric density and distribut...
We present a novel nonparametric density estimator and a new data-driven bandwidth selection method ...
"June, 1990: Revised July 1990."Includes bibliographical references (leaves 37-38).by Thomas M. Stok...
This thesis investigates higher order asymptotic properties of a semiparametric averaged derivative ...
New nonparametric procedure for estimating the probability density function of a positive random var...
A class of kernel type density estimators with locally varying bandwidth is introduced. This class c...
Estimators for derivatives associated with a density function can be useful in identifying its modes...
In this paper we propose a new nonparametric kernel based estimator for a density function $f$ which...
We investigate kernel estimators of multivariate density derivative functions using general (or unco...
AbstractThe problem of nonparametric estimation of a multivariate density function is addressed. In ...
AbstractEstimating the density function of a random vector taking values on the d-dimensional unit s...
AbstractWe consider a problem of nonparametric density estimation under shape restrictions. We deal ...
In this paper, we derive the asymptotic properties of the density-weighted average derivative estima...
In this paper, we consider the problem of estimating the d-order derivative of a density f, relying ...
Kernal density estimators are used for estimation of integrals of various squared derivatives of a p...
Abstract. In [ 5] we have announced a h e a r spllne method for nonparametric density and distribut...
We present a novel nonparametric density estimator and a new data-driven bandwidth selection method ...
"June, 1990: Revised July 1990."Includes bibliographical references (leaves 37-38).by Thomas M. Stok...
This thesis investigates higher order asymptotic properties of a semiparametric averaged derivative ...
New nonparametric procedure for estimating the probability density function of a positive random var...
A class of kernel type density estimators with locally varying bandwidth is introduced. This class c...