Kernel density estimation is a well known method involving a smoothing parameter (the bandwidth) that needs to be tuned by the user. Although this method has been widely used the bandwidth selection remains a challenging issue in terms of balancing algorithmic performance and statistical relevance. The purpose of this paper is to compare a recently developped bandwidth selection method for kernel density estimation to those which are commonly used by now (at least those which are implemented in the R-package). This new method is called Penalized Comparison to Overfitting (PCO). It has been proposed by some of the authors of this paper in a previous work devoted to its statistical relevance from a purely theoretical perspective. It is compar...
There has been major progress in recent years in data-based bandwidth selection for kernel density e...
In this investigation, the problem of estimating the probability density function of a function of m...
This paper focuses on the bandwidth selection in the kernel density estimation in the univariate cas...
Kernel density estimation is a well known method involving a smoothing parameter (the bandwidth) tha...
Kernel density estimation is a well known method involving a smoothing parameter (the bandwidth) tha...
We review the extensive recent literature on automatic, data-based selection of a global smoothing p...
Nonparametric kernel density estimation method makes no assumptions on the functional form of the cu...
Allthough nonparametric kernel density estimation is nowadays a standard technique in explorative da...
We present a new method for data-based selection of the bandwidth in kernel density estimation which...
Recently, much progress has been made on understanding the bandwidth selection problem in kernel den...
In kernel density estimation, the most crucial step is to select a proper bandwidth (smoothing param...
Recently, much progress has been made on understanding the bandwidth selection problem in kernel den...
A crucial problem in kernel density estimates of a probability density function is the selection of ...
A class of data-based bandwidth selection procedures for kernel density estimation is investigated. ...
Most recently proposed bandwidth selectors in kernel density estimation have been developed with int...
There has been major progress in recent years in data-based bandwidth selection for kernel density e...
In this investigation, the problem of estimating the probability density function of a function of m...
This paper focuses on the bandwidth selection in the kernel density estimation in the univariate cas...
Kernel density estimation is a well known method involving a smoothing parameter (the bandwidth) tha...
Kernel density estimation is a well known method involving a smoothing parameter (the bandwidth) tha...
We review the extensive recent literature on automatic, data-based selection of a global smoothing p...
Nonparametric kernel density estimation method makes no assumptions on the functional form of the cu...
Allthough nonparametric kernel density estimation is nowadays a standard technique in explorative da...
We present a new method for data-based selection of the bandwidth in kernel density estimation which...
Recently, much progress has been made on understanding the bandwidth selection problem in kernel den...
In kernel density estimation, the most crucial step is to select a proper bandwidth (smoothing param...
Recently, much progress has been made on understanding the bandwidth selection problem in kernel den...
A crucial problem in kernel density estimates of a probability density function is the selection of ...
A class of data-based bandwidth selection procedures for kernel density estimation is investigated. ...
Most recently proposed bandwidth selectors in kernel density estimation have been developed with int...
There has been major progress in recent years in data-based bandwidth selection for kernel density e...
In this investigation, the problem of estimating the probability density function of a function of m...
This paper focuses on the bandwidth selection in the kernel density estimation in the univariate cas...