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Uniform convergence of convolution estimators for the response density in nonparametric regression

Abstract

We consider a nonparametric regression model Y=r(X)+εY=r(X)+\varepsilon with a random covariate XX that is independent of the error ε\varepsilon. Then the density of the response YY is a convolution of the densities of ε\varepsilon and r(X)r(X). It can therefore be estimated by a convolution of kernel estimators for these two densities, or more generally by a local von Mises statistic. If the regression function has a nowhere vanishing derivative, then the convolution estimator converges at a parametric rate. We show that the convergence holds uniformly, and that the corresponding process obeys a functional central limit theorem in the space C0(R)C_0(\mathbb {R}) of continuous functions vanishing at infinity, endowed with the sup-norm. The estimator is not efficient. We construct an additive correction that makes it efficient.

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