In a regression model, we write the Nadaraya-Watson estimator of the regression function as the quotient of two kernel estimators, and propose a bandwidth selection method for both the numerator and the denominator. We prove risk bounds for both data driven estimators and for the resulting ratio. The simulation study confirms that both estimators have good performances, compared to the ones obtained by cross-validation selection of the bandwidth. However, unexpectedly, the single-bandwidth cross-validation estimator is found to be much better while choosing very small bandwidths. It performs even better than the ratio of the two best estimators of the numerator and the denominator of the collection, for which larger bandwidth are to be chos...
peer reviewedIn the regression model Y=b(X)+ε, where X has a density f, this paper deals with an or...
This paper establishes asymptotic lower bounds which provide limits, in various contexts, as to how ...
International audienceIn this paper, we consider nonparametric regression estimation when the predic...
In the context of nonparametric regression estimation, the behaviour of kernel methods such as the N...
In the context of nonparametric regression estimation, the behaviour of kernel methods such as the N...
Nonparametric kernel estimators are mostly used in a variety of statistical research fields. Nadaray...
International audienceEstimator selection has become a crucial issue in non parametric estimation. T...
We present a novel nonparametric density estimator and a new data-driven bandwidth selection method ...
It is shown that, for kernel-based classification with univariate distributions and two populations...
Bandwidth selection is critical for kernel estimation because it controls the amount of smoothing fo...
AbstractThis paper studies the risks and bandwidth choices of a kernel estimate of the underlying de...
This paper develops a sampling algorithm for bandwidth estimation in a nonparametric regression mode...
AbstractCross-validation methodologies have been widely used as a means of selecting tuning paramete...
This paper develops a sampling algorithm for bandwidth estimation in a nonparametric regression mode...
This paper establishes asymptotic lower bounds which provide limits, in various contexts, as to how ...
peer reviewedIn the regression model Y=b(X)+ε, where X has a density f, this paper deals with an or...
This paper establishes asymptotic lower bounds which provide limits, in various contexts, as to how ...
International audienceIn this paper, we consider nonparametric regression estimation when the predic...
In the context of nonparametric regression estimation, the behaviour of kernel methods such as the N...
In the context of nonparametric regression estimation, the behaviour of kernel methods such as the N...
Nonparametric kernel estimators are mostly used in a variety of statistical research fields. Nadaray...
International audienceEstimator selection has become a crucial issue in non parametric estimation. T...
We present a novel nonparametric density estimator and a new data-driven bandwidth selection method ...
It is shown that, for kernel-based classification with univariate distributions and two populations...
Bandwidth selection is critical for kernel estimation because it controls the amount of smoothing fo...
AbstractThis paper studies the risks and bandwidth choices of a kernel estimate of the underlying de...
This paper develops a sampling algorithm for bandwidth estimation in a nonparametric regression mode...
AbstractCross-validation methodologies have been widely used as a means of selecting tuning paramete...
This paper develops a sampling algorithm for bandwidth estimation in a nonparametric regression mode...
This paper establishes asymptotic lower bounds which provide limits, in various contexts, as to how ...
peer reviewedIn the regression model Y=b(X)+ε, where X has a density f, this paper deals with an or...
This paper establishes asymptotic lower bounds which provide limits, in various contexts, as to how ...
International audienceIn this paper, we consider nonparametric regression estimation when the predic...