[[abstract]]Variable window width kernel density estimators, with the width varying proportionally to the square root of the density, have been thought to have superior asymptotic properties. The rate of convergence has been claimed to be as good as those typical for higher-order kernels, which makes the variable width estimators more attractive because no adjustment is needed to handle the negativity usually entailed by the latter. However, in a recent paper, Terrell and Scott show that these results can fail in important cases. In this paper, we characterize situations where the fast rate is valid, and also give rates for a variety of cases where they are slower. In addition, a modification of the usual variable window width estimator is ...
In this paper, the problem of estimating the mode of a probability density function has been studied...
Abstract. Some linkages between kernel and penalty methods of density estimation are explored. It is...
Results on nonparametric kernel estimators of density differ according to the assumed degree of dens...
Variable window width kernel density estimators, with the width varying proportionally to the square...
The smoothing parameter or window width for a kernel estimator of a probability density at a point h...
Various consistency proofs for the kernel density estimator have been developed over the last few d...
Variable bandwidth kernel density estimators increase the window width at low densities and decrease...
We consider many kernel-based density estimators, all theoretically improving bias from O(h2), as th...
The nature of the kernel density estimator (KDE) is to find the underlying probability density funct...
This paper introduces new adaptive versions of the variable location density estimator which, for th...
Summary. Methods for improving the basic kernel density estimator in-clude variable locations, varia...
[[abstract]]Variable (bandwidth) kernel density estimation (Abramson (1982, Ann. Statist., 10, 1217-...
This study investigates the effect of bandwidth selection via plug-in method on the asymptotic struc...
AbstractMultivariate kernel density estimators are known to systematically deviate from the true val...
Recently, much progress has been made on understanding the bandwidth selection problem in kernel den...
In this paper, the problem of estimating the mode of a probability density function has been studied...
Abstract. Some linkages between kernel and penalty methods of density estimation are explored. It is...
Results on nonparametric kernel estimators of density differ according to the assumed degree of dens...
Variable window width kernel density estimators, with the width varying proportionally to the square...
The smoothing parameter or window width for a kernel estimator of a probability density at a point h...
Various consistency proofs for the kernel density estimator have been developed over the last few d...
Variable bandwidth kernel density estimators increase the window width at low densities and decrease...
We consider many kernel-based density estimators, all theoretically improving bias from O(h2), as th...
The nature of the kernel density estimator (KDE) is to find the underlying probability density funct...
This paper introduces new adaptive versions of the variable location density estimator which, for th...
Summary. Methods for improving the basic kernel density estimator in-clude variable locations, varia...
[[abstract]]Variable (bandwidth) kernel density estimation (Abramson (1982, Ann. Statist., 10, 1217-...
This study investigates the effect of bandwidth selection via plug-in method on the asymptotic struc...
AbstractMultivariate kernel density estimators are known to systematically deviate from the true val...
Recently, much progress has been made on understanding the bandwidth selection problem in kernel den...
In this paper, the problem of estimating the mode of a probability density function has been studied...
Abstract. Some linkages between kernel and penalty methods of density estimation are explored. It is...
Results on nonparametric kernel estimators of density differ according to the assumed degree of dens...