International audienceIn this paper, we consider nonparametric regression estimation when the predictor is a functional random variable (typically a curve) and the response is scalar. Starting from a classical collection of kernel estimates, the bias-variance decomposition of a pointwise risk is investigated to understand what can be expected at best from adaptive estimation. We propose a fully data-driven local bandwidth selection rule in the spirit of the Goldenshluger and Lepski method. The main result is a nonasymptotic risk bound which shows the optimality of our tuned estimator from the oracle point of view. Convergence rates are also derived for regression functions belonging to Hölder spaces and under various assumptions on the rate...
We propose a novel kernel estimator of the baseline function in a general high-dimensional Cox model...
We propose a novel kernel estimator of the baseline function in a general high-dimensional Cox model...
We propose a novel kernel estimator of the baseline function in a general high-dimensional Cox model...
International audienceIn this paper, we consider nonparametric regression estimation when the predic...
International audienceIn this paper, we consider nonparametric regression estimation when the predic...
International audienceIn this paper, we consider nonparametric regression estimation when the predic...
International audienceIn this paper, we consider nonparametric regression estimation when the predic...
International audienceIn this work, we develop a method of adaptive nonparametric estimation, based ...
37 pagesIn this paper, we deal with the data-driven selection of multidimensional and (possibly) ani...
International audienceWe consider the nonparametric kernel estimation of the conditional cumulative ...
International audienceSeveral adaptive methods to estimate a density from biased data are pre-sented...
International audienceSeveral adaptive methods to estimate a density from biased data are pre-sented...
AbstractWe consider the kernel estimation of a multivariate regression function at a point. Theoreti...
L'objet principal de cette thèse est de développer des estimateurs adaptatifs en statistique pour do...
The main purpose of this thesis is to develop adaptive estimators for functional data. In the first ...
We propose a novel kernel estimator of the baseline function in a general high-dimensional Cox model...
We propose a novel kernel estimator of the baseline function in a general high-dimensional Cox model...
We propose a novel kernel estimator of the baseline function in a general high-dimensional Cox model...
International audienceIn this paper, we consider nonparametric regression estimation when the predic...
International audienceIn this paper, we consider nonparametric regression estimation when the predic...
International audienceIn this paper, we consider nonparametric regression estimation when the predic...
International audienceIn this paper, we consider nonparametric regression estimation when the predic...
International audienceIn this work, we develop a method of adaptive nonparametric estimation, based ...
37 pagesIn this paper, we deal with the data-driven selection of multidimensional and (possibly) ani...
International audienceWe consider the nonparametric kernel estimation of the conditional cumulative ...
International audienceSeveral adaptive methods to estimate a density from biased data are pre-sented...
International audienceSeveral adaptive methods to estimate a density from biased data are pre-sented...
AbstractWe consider the kernel estimation of a multivariate regression function at a point. Theoreti...
L'objet principal de cette thèse est de développer des estimateurs adaptatifs en statistique pour do...
The main purpose of this thesis is to develop adaptive estimators for functional data. In the first ...
We propose a novel kernel estimator of the baseline function in a general high-dimensional Cox model...
We propose a novel kernel estimator of the baseline function in a general high-dimensional Cox model...
We propose a novel kernel estimator of the baseline function in a general high-dimensional Cox model...