Kernal density estimators are used for estimation of integrals of various squared derivatives of a probability density. Rates of convergence in mean squared error are calculated, which show that appropriate values of the smoothing parameter are much smaller than those for ordinary density estimation. The rate of convergence increases with stronger smoothness assumptions, however, unlike ordinary density estimation, the parametric rate of n-1 can be achieved even when only a finite amount of differentiability is assumed. The implications for data-driven bandwidth selection in ordinary density estimation are considered
Simple kernel-type estimators of integrals of general powers of general derivatives of probability d...
In this paper robustness properties are studied for kernel density estimators. A plug-in and least s...
A class of data-based bandwidth selection procedures for kernel density estimation is investigated. ...
Kernal density estimators are used for estimation of integrals of various squared derivatives of a p...
Kernel spectrum estimates are used for the estimation of integrals of various squared derivatives of...
International audienceHall and Marron (1987) introduced kernel estimators of integrals of various sq...
International audienceHall and Marron (1987) introduced kernel estimators of integrals of various sq...
International audienceHall and Marron (1987) introduced kernel estimators of integrals of the square...
Results on nonparametric kernel estimators of density differ according to the assumed degree of dens...
We investigate the interplay of smoothness and monotonicity assumptions when estimating a density fr...
There are various methods for estimating a density. A group of methods which estimate the density as...
De Bruin et al. (Comput. Statist. Data Anal. 30 (1999) 19) provide a unique method to estimate the p...
Based on a random sample of size n from an unknown density f on the real line, several data-driven m...
De Bruin et al. (Comput. Statist. Data Anal. 30 (1999) 19) provide a unique method to estimate the p...
In this investigation, the problem of estimating the probability density function of a function of m...
Simple kernel-type estimators of integrals of general powers of general derivatives of probability d...
In this paper robustness properties are studied for kernel density estimators. A plug-in and least s...
A class of data-based bandwidth selection procedures for kernel density estimation is investigated. ...
Kernal density estimators are used for estimation of integrals of various squared derivatives of a p...
Kernel spectrum estimates are used for the estimation of integrals of various squared derivatives of...
International audienceHall and Marron (1987) introduced kernel estimators of integrals of various sq...
International audienceHall and Marron (1987) introduced kernel estimators of integrals of various sq...
International audienceHall and Marron (1987) introduced kernel estimators of integrals of the square...
Results on nonparametric kernel estimators of density differ according to the assumed degree of dens...
We investigate the interplay of smoothness and monotonicity assumptions when estimating a density fr...
There are various methods for estimating a density. A group of methods which estimate the density as...
De Bruin et al. (Comput. Statist. Data Anal. 30 (1999) 19) provide a unique method to estimate the p...
Based on a random sample of size n from an unknown density f on the real line, several data-driven m...
De Bruin et al. (Comput. Statist. Data Anal. 30 (1999) 19) provide a unique method to estimate the p...
In this investigation, the problem of estimating the probability density function of a function of m...
Simple kernel-type estimators of integrals of general powers of general derivatives of probability d...
In this paper robustness properties are studied for kernel density estimators. A plug-in and least s...
A class of data-based bandwidth selection procedures for kernel density estimation is investigated. ...