A new method is developed for performing sufficient dimension reduction when probabilistic graphical models are being used to estimate parameters. The procedure enriches the domain of application of dimension reduction techniques to settings where (i) p the number of variables in the model is much larger than the available sample size n, (ii) p is much larger than the number of slices H the model uses and (iii) D the number of projection vectors can be larger than the number of slices H. The methodology is developed for the case of the sliced inverse regression model, but extensions to other dimension reduction techniques such as sliced average variance estimation or other methods are straightforward
Sliced Inverse Regression (SIR) is a promising technique for the purpose of dimension reduction. Sev...
We develop an extension of sliced inverse regression (SIR) that we call localized sliced inverse reg...
Regression is the study of the dependence of a response variable y on a collection predictors p coll...
We develop in this manuscript a new method for performing dimension reduction when probabilistic gra...
A new method is developed for performing sufficient dimension reduction when probabilistic graphical...
In statistics, dimension reduction is a method to reduce the number of variables, which will then be...
Summary. Sliced inverse regression is one of the widely used dimension reduction methods. Chiaromont...
Sliced inverse regression is one of the widely used dimension reduction methods. Chiaromonte and co-...
Sliced Inverse Regression is a method for reducing the dimensionality in multivariate non parametric...
The presented work deals with Sliced inverse regression method for dimension reduction of explanator...
We employ Lasso shrinkage within the context of sufficient dimension reduction to obtain a shrinkage...
We employ Lasso shrinkage within the context of sufficient dimension reduction to obtain a shrinkage...
Sliced inverse regression (SIR) and related methods were introduced in order to reduce the dimension...
A semiparametric regression model of a q-dimensional multivariate response y on a p-dimensional cova...
Since its introduction in the early 90's, the Sliced Inverse Regression (SIR) methodology has evolve...
Sliced Inverse Regression (SIR) is a promising technique for the purpose of dimension reduction. Sev...
We develop an extension of sliced inverse regression (SIR) that we call localized sliced inverse reg...
Regression is the study of the dependence of a response variable y on a collection predictors p coll...
We develop in this manuscript a new method for performing dimension reduction when probabilistic gra...
A new method is developed for performing sufficient dimension reduction when probabilistic graphical...
In statistics, dimension reduction is a method to reduce the number of variables, which will then be...
Summary. Sliced inverse regression is one of the widely used dimension reduction methods. Chiaromont...
Sliced inverse regression is one of the widely used dimension reduction methods. Chiaromonte and co-...
Sliced Inverse Regression is a method for reducing the dimensionality in multivariate non parametric...
The presented work deals with Sliced inverse regression method for dimension reduction of explanator...
We employ Lasso shrinkage within the context of sufficient dimension reduction to obtain a shrinkage...
We employ Lasso shrinkage within the context of sufficient dimension reduction to obtain a shrinkage...
Sliced inverse regression (SIR) and related methods were introduced in order to reduce the dimension...
A semiparametric regression model of a q-dimensional multivariate response y on a p-dimensional cova...
Since its introduction in the early 90's, the Sliced Inverse Regression (SIR) methodology has evolve...
Sliced Inverse Regression (SIR) is a promising technique for the purpose of dimension reduction. Sev...
We develop an extension of sliced inverse regression (SIR) that we call localized sliced inverse reg...
Regression is the study of the dependence of a response variable y on a collection predictors p coll...