International audienceA kernel conditional quantile estimate of a real-valued non-stationary spatial process is proposed for a prediction goal at a non-observed location of the underlying process. The originality is based on the ability to take into account some local spatial dependency. Large sample properties based on almost complete and \(L^q\)-consistencies of the estimator are established. A numerical study is given in order to illustrate the performance of our methodology
This paper deals with the estimation of the tail index of a conditionnal heavy-tailed distribution o...
Abstract: We define a nonparametric prewhitening method for estimating condi-tional quantiles based ...
Let (X, Y) be a random vector such that X is d-dimensional, Y is real valued, and θ(X)is the co...
International audienceIn this paper, we present a statistical framework for modeling conditional qua...
noteNational audienceConditional quantiles are required in various economic, biomedical or industria...
Given a stationary multidimensional spatial process (i=(i,i)∈ℝ×ℝ,i∈ℤ), we investigate a kernel estim...
Spatial regression estimation as well as prediction is an interesting and crucial problem in statist...
The main purpose of this thesis concerns the problem of spatial prediction using some nonparametric ...
Dans cette thèse, nous nous intéressons au problème de la prévision spatiale en considérant des modè...
Given a spatial random process (Xi; Yi) 2 E R; i 2 ZN , we investigate a nonparametric estimate of t...
Let (X, Y) be a two dimensional random variable with a joint density function f(x, y) and a joint di...
Let {(Y i, X i), i ∈ ℤ n} be a stationary real-valued (d + 1)-dimensional spatial processes. Denote ...
This paper contains a complete procedure for calculating the value of a conditional quantile estimat...
Charlier, Paindaveine, and Saracco (2014) recently introduced a nonparametric estimatorof conditiona...
We define a nonparametric prewhitening method for estimating conditional quantiles based on local li...
This paper deals with the estimation of the tail index of a conditionnal heavy-tailed distribution o...
Abstract: We define a nonparametric prewhitening method for estimating condi-tional quantiles based ...
Let (X, Y) be a random vector such that X is d-dimensional, Y is real valued, and θ(X)is the co...
International audienceIn this paper, we present a statistical framework for modeling conditional qua...
noteNational audienceConditional quantiles are required in various economic, biomedical or industria...
Given a stationary multidimensional spatial process (i=(i,i)∈ℝ×ℝ,i∈ℤ), we investigate a kernel estim...
Spatial regression estimation as well as prediction is an interesting and crucial problem in statist...
The main purpose of this thesis concerns the problem of spatial prediction using some nonparametric ...
Dans cette thèse, nous nous intéressons au problème de la prévision spatiale en considérant des modè...
Given a spatial random process (Xi; Yi) 2 E R; i 2 ZN , we investigate a nonparametric estimate of t...
Let (X, Y) be a two dimensional random variable with a joint density function f(x, y) and a joint di...
Let {(Y i, X i), i ∈ ℤ n} be a stationary real-valued (d + 1)-dimensional spatial processes. Denote ...
This paper contains a complete procedure for calculating the value of a conditional quantile estimat...
Charlier, Paindaveine, and Saracco (2014) recently introduced a nonparametric estimatorof conditiona...
We define a nonparametric prewhitening method for estimating conditional quantiles based on local li...
This paper deals with the estimation of the tail index of a conditionnal heavy-tailed distribution o...
Abstract: We define a nonparametric prewhitening method for estimating condi-tional quantiles based ...
Let (X, Y) be a random vector such that X is d-dimensional, Y is real valued, and θ(X)is the co...