We propose and study a kernel estimator of a density in which the kernel is adapted to the data but not fixed. The smoothing procedure is followed by a location-scale transformation to reduce bias and variance. The new method naturally leads to an adaptive choice of the smoothing parameters which avoids asymptotic expansions.Kernel density estimator Adaptive choice
<div><p>Kernel density estimation is a widely used method for estimating a distribution based on a s...
AbstractIn some applications of kernel density estimation the data may have a highly non-uniform dis...
We consider adapting bandwidths of a kernel density estimator according to the ranks of observations...
[[abstract]]Variable (bandwidth) kernel density estimation (Abramson (1982, Ann. Statist., 10, 1217-...
Variable (bandwidth) kernel density estimation (Abramson (1982,Ann. Statist.,10, 1217–1223)) and a k...
This paper introduces new adaptive versions of the variable location density estimator which, for th...
This paper introduces new adaptive versions of the variable location density estimator which, for th...
Kernel density estimators have been studied in great detail. In this note a new family of kernels, d...
This insert describes the module akdensity. akdensity extends the official kdensity that estimates d...
Kernel density estimation is a widely used method for estimating a distribution based on a sample of...
This insert describes the module akdensity. akdensity extends the official kdensity that estimates d...
This paper proposes the use of adaptive kernel in a bootstrap boosting algorithm in kernel density e...
Kernel density estimation is a widely used method for estimating a distribution based on a sample of...
There are various methods for estimating a density. A group of methods which estimate the density as...
Abstract. This insert describes the module akdensity. akdensity extends the official kdensity that e...
<div><p>Kernel density estimation is a widely used method for estimating a distribution based on a s...
AbstractIn some applications of kernel density estimation the data may have a highly non-uniform dis...
We consider adapting bandwidths of a kernel density estimator according to the ranks of observations...
[[abstract]]Variable (bandwidth) kernel density estimation (Abramson (1982, Ann. Statist., 10, 1217-...
Variable (bandwidth) kernel density estimation (Abramson (1982,Ann. Statist.,10, 1217–1223)) and a k...
This paper introduces new adaptive versions of the variable location density estimator which, for th...
This paper introduces new adaptive versions of the variable location density estimator which, for th...
Kernel density estimators have been studied in great detail. In this note a new family of kernels, d...
This insert describes the module akdensity. akdensity extends the official kdensity that estimates d...
Kernel density estimation is a widely used method for estimating a distribution based on a sample of...
This insert describes the module akdensity. akdensity extends the official kdensity that estimates d...
This paper proposes the use of adaptive kernel in a bootstrap boosting algorithm in kernel density e...
Kernel density estimation is a widely used method for estimating a distribution based on a sample of...
There are various methods for estimating a density. A group of methods which estimate the density as...
Abstract. This insert describes the module akdensity. akdensity extends the official kdensity that e...
<div><p>Kernel density estimation is a widely used method for estimating a distribution based on a s...
AbstractIn some applications of kernel density estimation the data may have a highly non-uniform dis...
We consider adapting bandwidths of a kernel density estimator according to the ranks of observations...