The problem of dimension reduction in multiple regressions is investigated in this paper, in which data are from several populations that share the same variables. Assuming that the set of relevant predictors is the same across the regressions, a joint estimation and selection method is proposed, aiming to preserve the common structure, while allowing for population-specific characteristics. The new approach is based upon the relationship between sliced inverse regression and multiple linear regression, and is achieved through the lasso shrinkage penalty. A fast alternating algorithm is developed to solve the corresponding optimization problem. The performance of the proposed method is illustrated through simulated and real data examples
A new method is developed for performing sufficient dimension reduction when probabilistic graphical...
The focus is on the functional regression model in which a real random variable has to be predicted ...
Since its introduction in the early 90's, the Sliced Inverse Regression (SIR) methodology has evolve...
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...
The family of inverse regression estimators that was recently proposed by Cook and Ni has proven eff...
Summary. Sliced inverse regression is one of the widely used dimension reduction methods. Chiaromont...
Summary. The family of inverse regression estimators recently proposed by Cook and Ni (2005) have pr...
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...
A semiparametric regression model of a q-dimensional multivariate response y on a p-dimensional cova...
For multiple index models, it has recently been shown that the sliced inverse regression (SIR) is co...
In this article, we consider a semiparametric single index regression model involving a real depende...
The presented work deals with Sliced inverse regression method for dimension reduction of explanator...
In statistics, dimension reduction is a method to reduce the number of variables, which will then be...
A new method is developed for performing sufficient dimension reduction when probabilistic graphical...
The focus is on the functional regression model in which a real random variable has to be predicted ...
Since its introduction in the early 90's, the Sliced Inverse Regression (SIR) methodology has evolve...
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...
The family of inverse regression estimators that was recently proposed by Cook and Ni has proven eff...
Summary. Sliced inverse regression is one of the widely used dimension reduction methods. Chiaromont...
Summary. The family of inverse regression estimators recently proposed by Cook and Ni (2005) have pr...
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...
A semiparametric regression model of a q-dimensional multivariate response y on a p-dimensional cova...
For multiple index models, it has recently been shown that the sliced inverse regression (SIR) is co...
In this article, we consider a semiparametric single index regression model involving a real depende...
The presented work deals with Sliced inverse regression method for dimension reduction of explanator...
In statistics, dimension reduction is a method to reduce the number of variables, which will then be...
A new method is developed for performing sufficient dimension reduction when probabilistic graphical...
The focus is on the functional regression model in which a real random variable has to be predicted ...
Since its introduction in the early 90's, the Sliced Inverse Regression (SIR) methodology has evolve...