International audienceFor tests based on nonparametric methods, power crucially depends on the dimension of the conditioning variables, and specifically decreases with this dimension. This is known as the “curse of dimensionality”. We propose a new general approach to nonparametric testing in high dimensional settings and we show how to implement it when testing for a parametric regression. The resulting test behaves against directional local alternatives almost as if the dimension of the regressors was one. It is also almost optimal against classes of one-dimensional alternatives for a suitable choice of the smoothing parameter. The test performs well in small samples compared to several other test
We develop a powerful quadratic test for the overall significance of many covariates in a dense regr...
This paper proposes a test for selecting explanatory variables in nonparametric regression. The test...
This paper proposes a test for selecting explanatory variables in nonparametric regression. The test...
International audienceFor tests based on nonparametric methods, power crucially depends on the dimen...
Testing for parametric structure is an important issue in non-parametric regression analysis. A stan...
103 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2000.To effectively build a regres...
Despite a substantial literature on nonparametric two-sample goodness-of-fit testing in arbitrary di...
We consider the problem of nonparametric regression, consisting of learning an arbitrary mapping f :...
A new test for non-linearity in the conditional mean is proposed using functions of the principal co...
A new test for non-linearity in the conditional mean is proposed using functions of the principal co...
A new test for non-linearity in the conditional mean is proposed using functions of the principal co...
A new test for non-linearity in the conditional mean is proposed using functions of the principal co...
This paper is about two related decision theoretic problems, nonparametric two-sample testing and in...
This paper is about two related decision theoretic problems, nonparametric two-sample testing and in...
This paper proposes a test for selecting explanatory variables in nonparametric regression. The test...
We develop a powerful quadratic test for the overall significance of many covariates in a dense regr...
This paper proposes a test for selecting explanatory variables in nonparametric regression. The test...
This paper proposes a test for selecting explanatory variables in nonparametric regression. The test...
International audienceFor tests based on nonparametric methods, power crucially depends on the dimen...
Testing for parametric structure is an important issue in non-parametric regression analysis. A stan...
103 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2000.To effectively build a regres...
Despite a substantial literature on nonparametric two-sample goodness-of-fit testing in arbitrary di...
We consider the problem of nonparametric regression, consisting of learning an arbitrary mapping f :...
A new test for non-linearity in the conditional mean is proposed using functions of the principal co...
A new test for non-linearity in the conditional mean is proposed using functions of the principal co...
A new test for non-linearity in the conditional mean is proposed using functions of the principal co...
A new test for non-linearity in the conditional mean is proposed using functions of the principal co...
This paper is about two related decision theoretic problems, nonparametric two-sample testing and in...
This paper is about two related decision theoretic problems, nonparametric two-sample testing and in...
This paper proposes a test for selecting explanatory variables in nonparametric regression. The test...
We develop a powerful quadratic test for the overall significance of many covariates in a dense regr...
This paper proposes a test for selecting explanatory variables in nonparametric regression. The test...
This paper proposes a test for selecting explanatory variables in nonparametric regression. The test...