International audienceThe multidimensional Gaussian kernel-density estimation (G-KDE) is a powerful tool to identify the distribution of random vectors when the maximal information is a set of independent realizations. For these methods, a key issue is the choice of the kernel and the optimization of the bandwidth matrix. To optimize these kernel representations, two adaptations of the classical G-KDE are presented. First, it is proposed to add constraints on the mean and the covariance matrix in the G-KDE formalism. Secondly, it is suggested to separate in different groups the components of the random vector of interest that could reasonably be considered as independent. This block by block decomposition is carried out by looking for the m...
Nonparametric kernel estimation of density is widely used, how-ever, many of the pointwise and globa...
I propose two new kernel-based models that enable an exact generative procedure: the Gaussian proces...
Summary. Methods for improving the basic kernel density estimator in-clude variable locations, varia...
International audienceThe multidimensional Gaussian kernel-density estimation (G-KDE) is a powerful ...
We propose a nonparametric method for constructing multivariate kernels tuned to the configuration o...
Numerous facets of scientific research implicitly or explicitly call for the estimation of probabili...
In this paper, we propose a new method to estimate the multivariate conditional density, f(mjx), a d...
AbstractNumerous facets of scientific research implicitly or explicitly call for the estimation of p...
International audienceA new methodology is proposed for generating realizations of a random vector w...
International audienceThis paper analyzes the kernel density estimation on spaces of Gaussian distri...
Kernel density estimation is a popular tool for visualising the distribution of data. See Simonoff (...
This paper analyses the kernel density estimation on spaces of Gaussian distributions endowed with d...
International audienceWhen nonlinear measures are estimated from sampled temporal signals with finit...
In this investigation, the problem of estimating the probability density function of a function of m...
Abstract — This paper addresses the challenges of the fusion of two random vectors with imprecisely ...
Nonparametric kernel estimation of density is widely used, how-ever, many of the pointwise and globa...
I propose two new kernel-based models that enable an exact generative procedure: the Gaussian proces...
Summary. Methods for improving the basic kernel density estimator in-clude variable locations, varia...
International audienceThe multidimensional Gaussian kernel-density estimation (G-KDE) is a powerful ...
We propose a nonparametric method for constructing multivariate kernels tuned to the configuration o...
Numerous facets of scientific research implicitly or explicitly call for the estimation of probabili...
In this paper, we propose a new method to estimate the multivariate conditional density, f(mjx), a d...
AbstractNumerous facets of scientific research implicitly or explicitly call for the estimation of p...
International audienceA new methodology is proposed for generating realizations of a random vector w...
International audienceThis paper analyzes the kernel density estimation on spaces of Gaussian distri...
Kernel density estimation is a popular tool for visualising the distribution of data. See Simonoff (...
This paper analyses the kernel density estimation on spaces of Gaussian distributions endowed with d...
International audienceWhen nonlinear measures are estimated from sampled temporal signals with finit...
In this investigation, the problem of estimating the probability density function of a function of m...
Abstract — This paper addresses the challenges of the fusion of two random vectors with imprecisely ...
Nonparametric kernel estimation of density is widely used, how-ever, many of the pointwise and globa...
I propose two new kernel-based models that enable an exact generative procedure: the Gaussian proces...
Summary. Methods for improving the basic kernel density estimator in-clude variable locations, varia...