International audienceThis paper investigates a nonparametric spatial predictor of a stationary multidimensional spatial process observed over a rectangular domain. The proposed predictor depends on two kernels in order to control both the distance between observations and that between spatial locations. The uniform almost complete consistency and the asymptotic normality of the kernel predictor are obtained when the sample considered is an alpha-mixing sequence. Numerical studies were carried out in order to illustrate the behaviour of our methodology both for simulated data and for an environmental data set
International audienceIn this paper, we present a statistical framework for modeling conditional qua...
In spatial statistics often the response variable at a given location and time is ob-served together...
International audienceWe investigate here a kernel estimate of A spatial regression function of a st...
International audienceThis paper investigates a nonparametric spatial predictor of a stationary mult...
International audienceThis paper investigates a nonparametric spatial predictor of a stationary mult...
International audienceIn this note, we propose a nonparametric spatial estimator of the regression f...
International audienceIn this note, we propose a nonparametric spatial estimator of the regression f...
International audienceIn this note, we propose a nonparametric spatial estimator of the regression f...
International audienceIn this note, we propose a nonparametric spatial estimator of the regression f...
International audienceIn this note, we propose a nonparametric spatial estimator of the regression f...
International audienceIn this note, we propose a nonparametric spatial estimator of the regression f...
International audienceIn this note, we propose a nonparametric spatial estimator of the regression f...
Abstract: In this paper we develop a nonparametric multivariate spatial model that avoids specifying...
In this paper we develop a nonparametric multivariate spatial model that avoids specifying a Gaussia...
International audienceIn this paper, we present a statistical framework for modeling conditional qua...
International audienceIn this paper, we present a statistical framework for modeling conditional qua...
In spatial statistics often the response variable at a given location and time is ob-served together...
International audienceWe investigate here a kernel estimate of A spatial regression function of a st...
International audienceThis paper investigates a nonparametric spatial predictor of a stationary mult...
International audienceThis paper investigates a nonparametric spatial predictor of a stationary mult...
International audienceIn this note, we propose a nonparametric spatial estimator of the regression f...
International audienceIn this note, we propose a nonparametric spatial estimator of the regression f...
International audienceIn this note, we propose a nonparametric spatial estimator of the regression f...
International audienceIn this note, we propose a nonparametric spatial estimator of the regression f...
International audienceIn this note, we propose a nonparametric spatial estimator of the regression f...
International audienceIn this note, we propose a nonparametric spatial estimator of the regression f...
International audienceIn this note, we propose a nonparametric spatial estimator of the regression f...
Abstract: In this paper we develop a nonparametric multivariate spatial model that avoids specifying...
In this paper we develop a nonparametric multivariate spatial model that avoids specifying a Gaussia...
International audienceIn this paper, we present a statistical framework for modeling conditional qua...
International audienceIn this paper, we present a statistical framework for modeling conditional qua...
In spatial statistics often the response variable at a given location and time is ob-served together...
International audienceWe investigate here a kernel estimate of A spatial regression function of a st...