Recently, much progress has been made on understanding the bandwidth selection problem in kernel density estimation. Here, analogous questions are considered for extensions to the basic problem, namely, for estimating derivatives, using ‘better’ kernel estimators, and for the multivariate case. In basic kernel density estimation, recent advances have resulted in considerable improvements being made over ‘moderate’ methods such as least squares cross-validation. Here, it is argued that, in the first two extension cases, the performance of moderate methods deteriorates even more, so that the necessity for ‘improved’ methods — and indeed their potential in theory if not necessarily in practice — is greatly increased. Rather extraordinary thing...
Abstract. This article gives ideas for developing statistics software which can work without user in...
Nonparametric kernel density estimation method makes no assumptions on the functional form of the cu...
A bandwidth selection method is proposed for kernel density estimation. This is based on the straigh...
Recently, much progress has been made on understanding the bandwidth selection problem in kernel den...
A class of data-based bandwidth selection procedures for kernel density estimation is investigated. ...
We present a new method for data-based selection of the bandwidth in kernel density estimation which...
A crucial problem in kernel density estimates of a probability density function is the selection of ...
We review the extensive recent literature on automatic, data-based selection of a global smoothing p...
In kernel density estimation, the most crucial step is to select a proper bandwidth (smoothing param...
There has been major progress in recent years in data-based bandwidth selection for kernel density e...
Variable bandwidth kernel density estimators increase the window width at low densities and decrease...
Variable bandwidth kernel density estimators increase the window width at low densities and decrease...
Allthough nonparametric kernel density estimation is nowadays a standard technique in explorative da...
International audienceIt is well established that one can improve performance of kernel density esti...
International audienceIt is well established that one can improve performance of kernel density esti...
Abstract. This article gives ideas for developing statistics software which can work without user in...
Nonparametric kernel density estimation method makes no assumptions on the functional form of the cu...
A bandwidth selection method is proposed for kernel density estimation. This is based on the straigh...
Recently, much progress has been made on understanding the bandwidth selection problem in kernel den...
A class of data-based bandwidth selection procedures for kernel density estimation is investigated. ...
We present a new method for data-based selection of the bandwidth in kernel density estimation which...
A crucial problem in kernel density estimates of a probability density function is the selection of ...
We review the extensive recent literature on automatic, data-based selection of a global smoothing p...
In kernel density estimation, the most crucial step is to select a proper bandwidth (smoothing param...
There has been major progress in recent years in data-based bandwidth selection for kernel density e...
Variable bandwidth kernel density estimators increase the window width at low densities and decrease...
Variable bandwidth kernel density estimators increase the window width at low densities and decrease...
Allthough nonparametric kernel density estimation is nowadays a standard technique in explorative da...
International audienceIt is well established that one can improve performance of kernel density esti...
International audienceIt is well established that one can improve performance of kernel density esti...
Abstract. This article gives ideas for developing statistics software which can work without user in...
Nonparametric kernel density estimation method makes no assumptions on the functional form of the cu...
A bandwidth selection method is proposed for kernel density estimation. This is based on the straigh...