International audienceIn this work, we develop a method of adaptive nonparametric estimation, based on "warped" kernels. The aim is to estimate a real-valued function $s$ from a sample of random couples $(X,Y)$. We deal with transformed data $(\Phi(X),Y)$, with $\Phi$ a one-to-one function, to build a collection of kernel estimators. The data-driven bandwidth selection is done with a method inspired by Goldenshluger and Lepski~(2011). The method permits to handle various problems such as additive and multiplicative regression, conditional density estimation, hazard rate estimation based on randomly right censored data, and cumulative distribution function estimation from current-status data. The interest is threefold. First, the squared-bia...
. The problem of optimal adaptive estimation of a function at a given point from noisy data is consi...
Abstract. We propose a new type of non parametric density estimators fitted to nonnegative random va...
International audienceThis paper studies the estimation of the conditional density f(x,⋅) of Yi give...
International audienceIn this work, we develop a method of adaptive nonparametric estimation, based ...
International audienceIn this work, we develop a method of adaptive nonparametric estimation, based ...
Abstract. In this work, we develop a method of adaptive nonparametric estimation, based on "war...
International audienceIn this work, we develop a method of adaptive nonparametric estimation, based ...
We deal with the problem of nonparametric estimation of a multivariate regression function without a...
We deal with the problem of nonparametric estimation of a multivariate regression function without a...
International audienceWe deal with the problem of nonparametric estimation of a multivariate regress...
This thesis presents various problems of adaptive functional estimation, using projection and kernel...
This thesis presents various problems of adaptive functional estimation, using projection and kernel...
In this paper, we deal with nonparametric regression for circular data, meaning that observations ar...
Results on nonparametric kernel estimators of density differ according to the assumed degree of dens...
The problem of optimal adaptive estimation of a function at a given point from noisy data is conside...
. The problem of optimal adaptive estimation of a function at a given point from noisy data is consi...
Abstract. We propose a new type of non parametric density estimators fitted to nonnegative random va...
International audienceThis paper studies the estimation of the conditional density f(x,⋅) of Yi give...
International audienceIn this work, we develop a method of adaptive nonparametric estimation, based ...
International audienceIn this work, we develop a method of adaptive nonparametric estimation, based ...
Abstract. In this work, we develop a method of adaptive nonparametric estimation, based on "war...
International audienceIn this work, we develop a method of adaptive nonparametric estimation, based ...
We deal with the problem of nonparametric estimation of a multivariate regression function without a...
We deal with the problem of nonparametric estimation of a multivariate regression function without a...
International audienceWe deal with the problem of nonparametric estimation of a multivariate regress...
This thesis presents various problems of adaptive functional estimation, using projection and kernel...
This thesis presents various problems of adaptive functional estimation, using projection and kernel...
In this paper, we deal with nonparametric regression for circular data, meaning that observations ar...
Results on nonparametric kernel estimators of density differ according to the assumed degree of dens...
The problem of optimal adaptive estimation of a function at a given point from noisy data is conside...
. The problem of optimal adaptive estimation of a function at a given point from noisy data is consi...
Abstract. We propose a new type of non parametric density estimators fitted to nonnegative random va...
International audienceThis paper studies the estimation of the conditional density f(x,⋅) of Yi give...