We propose a nonparametric method for density estimation over (possibly complicated) spatial domains. The method combines a likelihood approach with a regularization based on a differential operator. We demonstrate the good inferential properties of the method. Moreover, we develop an estimation procedure based on advanced numerical techniques, and in particular making use of finite elements. This ensures high computational efficiency and enables great flexibility. The proposed method efficiently deals with data scattered over regions having complicated shapes, featuring complex boundaries, sharp concavities or holes. Moreover, it captures very well complicated signals having multiple modes with different directions and intensities of aniso...
International audienceIn this paper, we propose a nonparametric method to estimate the spatial densi...
We consider the problem of estimating the joint density of a d-dimensional random vec-tor X = (X1,X2...
When investigating the statistical characteristics of a field formed by locally inhomogeneous region...
We propose a nonparametric method for density estimation over (possibly complicated) spatial domains...
An innovative nonparametric method for density estimation over general two-dimensional Riemannian ma...
Estimation of the level sets for an unknown probability density is done with no specific assumed for...
Although Hartigan (1975) had already put forward the idea of connecting identification of subpopulat...
AbstractThis paper deals with non-parametric density estimation for spatial data. We study the asymp...
Tech ReportThe nonparametric density estimation method proposed in this paper is computationally fas...
Given a discrete sample of event locations, we wish to produce a probability density that models the...
This paper develops a nonparametric density estimator with parametric overtones. Suppose f(x, θ) is ...
International audienceThis paper deals with non-parametric density estimation for spatial data. We s...
The application of nonparametric probability density function estimation for the purpose of data ana...
The spatial features within a region influence many processes in human activity. Mountains, lakes, ...
AbstractA general nonparametric density estimation problem is considered in which the data is genera...
International audienceIn this paper, we propose a nonparametric method to estimate the spatial densi...
We consider the problem of estimating the joint density of a d-dimensional random vec-tor X = (X1,X2...
When investigating the statistical characteristics of a field formed by locally inhomogeneous region...
We propose a nonparametric method for density estimation over (possibly complicated) spatial domains...
An innovative nonparametric method for density estimation over general two-dimensional Riemannian ma...
Estimation of the level sets for an unknown probability density is done with no specific assumed for...
Although Hartigan (1975) had already put forward the idea of connecting identification of subpopulat...
AbstractThis paper deals with non-parametric density estimation for spatial data. We study the asymp...
Tech ReportThe nonparametric density estimation method proposed in this paper is computationally fas...
Given a discrete sample of event locations, we wish to produce a probability density that models the...
This paper develops a nonparametric density estimator with parametric overtones. Suppose f(x, θ) is ...
International audienceThis paper deals with non-parametric density estimation for spatial data. We s...
The application of nonparametric probability density function estimation for the purpose of data ana...
The spatial features within a region influence many processes in human activity. Mountains, lakes, ...
AbstractA general nonparametric density estimation problem is considered in which the data is genera...
International audienceIn this paper, we propose a nonparametric method to estimate the spatial densi...
We consider the problem of estimating the joint density of a d-dimensional random vec-tor X = (X1,X2...
When investigating the statistical characteristics of a field formed by locally inhomogeneous region...