It is well known that nonparametric regression techniques do not have good performance in high dimensional regression. However nonparametric regression is successful in one- or low-dimensional regression problems and is much more flexible than the parametric alternative. Hence, for high dimensional regression tasks one would like to reduce the regressor space to a lower dimension and then use nonparametric methods for curve estimation. A possible dimension reduction approach is Sliced Inverse Regression (L i 1991). It allows to find a base of a subspace in the regressor space which still carries important information for the regression. The vectors spanning this subspace are found with a technique similar to Principal Component Analysis an...
A family of dimension-reduction methods, the inverse regression (IR) family, is developed by minimiz...
Nonparametric regression is a powerful tool to estimate nonlinear relations between some predictors ...
Without parametric assumptions, high-dimensional regression analy-sis is already complex. This is ma...
RT: Linear smoothers for dimension estimation Abstract: Sliced Inverse Regression (Li, 1991) is a si...
In statistics, dimension reduction is a method to reduce the number of variables, which will then be...
The presented work deals with Sliced inverse regression method for dimension reduction of explanator...
Sliced inverse regression and principal Hessian directions (Li, 1991, 1992) aim to reduce the dimens...
The presented work deals with Sliced inverse regression method for dimension reduction of explanator...
Abstract: Sliced Inverse Regression is a method for reducing the dimension of the explanatory variab...
Summary. Sliced inverse regression is one of the widely used dimension reduction methods. Chiaromont...
A family of dimension-reduction methods, the inverse regression (IR) family, is developed by minimiz...
Sliced inverse regression is one of the widely used dimension reduction methods. Chiaromonte and co-...
Sliced inverse regression is a promising method for the estimation of the central dimension-reductio...
A semiparametric regression model of a q-dimensional multivariate response y on a p-dimensional cova...
Sliced Inverse Regression is a method for reducing the dimensionality in multivariate non parametric...
A family of dimension-reduction methods, the inverse regression (IR) family, is developed by minimiz...
Nonparametric regression is a powerful tool to estimate nonlinear relations between some predictors ...
Without parametric assumptions, high-dimensional regression analy-sis is already complex. This is ma...
RT: Linear smoothers for dimension estimation Abstract: Sliced Inverse Regression (Li, 1991) is a si...
In statistics, dimension reduction is a method to reduce the number of variables, which will then be...
The presented work deals with Sliced inverse regression method for dimension reduction of explanator...
Sliced inverse regression and principal Hessian directions (Li, 1991, 1992) aim to reduce the dimens...
The presented work deals with Sliced inverse regression method for dimension reduction of explanator...
Abstract: Sliced Inverse Regression is a method for reducing the dimension of the explanatory variab...
Summary. Sliced inverse regression is one of the widely used dimension reduction methods. Chiaromont...
A family of dimension-reduction methods, the inverse regression (IR) family, is developed by minimiz...
Sliced inverse regression is one of the widely used dimension reduction methods. Chiaromonte and co-...
Sliced inverse regression is a promising method for the estimation of the central dimension-reductio...
A semiparametric regression model of a q-dimensional multivariate response y on a p-dimensional cova...
Sliced Inverse Regression is a method for reducing the dimensionality in multivariate non parametric...
A family of dimension-reduction methods, the inverse regression (IR) family, is developed by minimiz...
Nonparametric regression is a powerful tool to estimate nonlinear relations between some predictors ...
Without parametric assumptions, high-dimensional regression analy-sis is already complex. This is ma...