International audienceIn this paper, we propose a nonparametric method to estimate the spatial density of a functional stationary random field. This latter is with values in some infinite dimensional normed space and admitted a density with respect to some reference measure. We study both the weak and strong consistencies of the considered estimator and also give some rates of convergence. Special attention is paid to the links between the probabilities of small balls and the rates of convergence of the estimator. The practical use and the behavior of the estimator are illustrated through some simulations and a real data application. Copyright Springer-Verlag 201
25 pagesIn this paper, under natural and easily verifiable conditions, we prove the $\mathbb{L}^1$-c...
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AbstractThis paper deals with non-parametric density estimation for spatial data. We study the asymp...
In this paper, we propose a nonparametric estimation of the spatial density of a functional stationa...
Kernel-type estimators of the multivariate density of stationary random fields indexed by multidimen...
AbstractLet ZN, N ≥ 1, denote the integer lattice points in the N-dimensional Euclidean space. Asymp...
International audienceWe investigate a kernel estimator of the probability density of a stationary r...
The estimation of the underlying probability density of n i.i.d. random objects on a compact Riemann...
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A density function is generally not well defined in functional data context, but we can define a sur...
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AbstractA general nonparametric density estimation problem is considered in which the data is genera...
Given a spatial random process (Xi; Yi) 2 E R; i 2 ZN , we investigate a nonparametric estimate of t...
Abstract. In this paper, under natural and easily verifiable conditions, we prove the L1-convergence...
25 pagesIn this paper, under natural and easily verifiable conditions, we prove the $\mathbb{L}^1$-c...
28 pagesIn this work, we establish the asymptotic normality of the deconvolution kernel density esti...
AbstractThis paper deals with non-parametric density estimation for spatial data. We study the asymp...
In this paper, we propose a nonparametric estimation of the spatial density of a functional stationa...
Kernel-type estimators of the multivariate density of stationary random fields indexed by multidimen...
AbstractLet ZN, N ≥ 1, denote the integer lattice points in the N-dimensional Euclidean space. Asymp...
International audienceWe investigate a kernel estimator of the probability density of a stationary r...
The estimation of the underlying probability density of n i.i.d. random objects on a compact Riemann...
In this paper a k-nearest neighbor type estimator of the marginal density function for a random fiel...
A density function is generally not well defined in functional data context, but we can define a sur...
Let X be an -valued random variable with unknown density f. Let X1,...,Xn be i.i.d. random variables...
International audienceThis paper is concerned with estimating the density mode for random field by k...
AbstractA general nonparametric density estimation problem is considered in which the data is genera...
Given a spatial random process (Xi; Yi) 2 E R; i 2 ZN , we investigate a nonparametric estimate of t...
Abstract. In this paper, under natural and easily verifiable conditions, we prove the L1-convergence...
25 pagesIn this paper, under natural and easily verifiable conditions, we prove the $\mathbb{L}^1$-c...
28 pagesIn this work, we establish the asymptotic normality of the deconvolution kernel density esti...
AbstractThis paper deals with non-parametric density estimation for spatial data. We study the asymp...