We propose a nonparametric method for constructing multivariate kernels tuned to the configuration of the sample, for density estimation in R-d, d moderate. The motivation behind the approach is to break down the construction of the kernel into two parts: determining its overall shape and then its global concentration. We consider a framework that is essentially nonparametric, as opposed to the usual bandwidth matrix parameterization. The shape of the kernel to be employed is determined by applying the backprojection operator, the dual of the Radon transform, to a collection of one-dimensional kernels, each optimally tuned to the concentration of the corresponding one-dimensional projections of the data. Once an overall shape is determined,...
We deal with the problem of nonparametric estimation of a multivariate regression function without a...
Standard fixed symmetric kernel type density estimators are known to encounter problems for positive...
Dans ce travail, l'approche non-paramétrique par noyaux associés mixtes multivariés est présentée po...
We consider kernel density estimation in the multivariate case, focusing on the use of some elements...
Abstract. We consider kernel density estimation in the multivariate case, focusing on the use of som...
We propose a new nonparametric estimator for the density function of multivariate bounded data. As f...
We propose a new nonparametric estimator for the density function of multivariate bounded data. As f...
This paper develops a nonparametric density estimator with parametric overtones. Suppose f(x, θ) is ...
We show that maximum likelihood weighted kernel density estimation offers a unified approach to dens...
We consider the problem of multivariate density estimation, using samples from the distribution of i...
International audienceThe multidimensional Gaussian kernel-density estimation (G-KDE) is a powerful ...
We consider the problem of estimating the joint density of a d-dimensional random vec-tor X = (X1,X2...
Numerous facets of scientific research implicitly or explicitly call for the estimation of probabili...
AbstractNumerous facets of scientific research implicitly or explicitly call for the estimation of p...
Linearity in a causal relationship between a dependent variable and a set of regressors is a common ...
We deal with the problem of nonparametric estimation of a multivariate regression function without a...
Standard fixed symmetric kernel type density estimators are known to encounter problems for positive...
Dans ce travail, l'approche non-paramétrique par noyaux associés mixtes multivariés est présentée po...
We consider kernel density estimation in the multivariate case, focusing on the use of some elements...
Abstract. We consider kernel density estimation in the multivariate case, focusing on the use of som...
We propose a new nonparametric estimator for the density function of multivariate bounded data. As f...
We propose a new nonparametric estimator for the density function of multivariate bounded data. As f...
This paper develops a nonparametric density estimator with parametric overtones. Suppose f(x, θ) is ...
We show that maximum likelihood weighted kernel density estimation offers a unified approach to dens...
We consider the problem of multivariate density estimation, using samples from the distribution of i...
International audienceThe multidimensional Gaussian kernel-density estimation (G-KDE) is a powerful ...
We consider the problem of estimating the joint density of a d-dimensional random vec-tor X = (X1,X2...
Numerous facets of scientific research implicitly or explicitly call for the estimation of probabili...
AbstractNumerous facets of scientific research implicitly or explicitly call for the estimation of p...
Linearity in a causal relationship between a dependent variable and a set of regressors is a common ...
We deal with the problem of nonparametric estimation of a multivariate regression function without a...
Standard fixed symmetric kernel type density estimators are known to encounter problems for positive...
Dans ce travail, l'approche non-paramétrique par noyaux associés mixtes multivariés est présentée po...