AbstractReduced rank regression assumes that the coefficient matrix in a multivariate regression model is not of full rank. The unknown rank is traditionally estimated under the assumption of normal responses. We derive an asymptotic test for the rank that only requires the response vector have finite second moments. The test is extended to the nonconstant covariance case. Linear combinations of the components of the predictor vector that are estimated to be significant for modelling the responses are obtained
summary:In this paper a new rank test in a linear regression model is introduced. The test statistic...
Preliminary Do not distribute We consider a generalized regression model with a partially linear ind...
This paper considers tests for the rank of a matrix for which a root-T consistent estimator is avail...
AbstractReduced rank regression assumes that the coefficient matrix in a multivariate regression mod...
AbstractIn reduced-rank regression, a matrix of expectations is modeled as a lower rank matrix. In f...
There has recently been renewed research interest in the development of tests of the rank of a matri...
The present work proposes tests for reduced rank in multivariate regression coefficient matrices, un...
Reduced-rank restrictions can add useful parsimony to coefficient matrices of multivariate models, b...
We propose a novel statistic to test the rank of a matrix. The rank statistic overcomes deficiencies...
We introduce a new criterion, the Rank Selection Criterion (RSC), for selecting the optimal reduced ...
SUMMARY. In the classical linear regression model with p dependent variables con-stituting the vecto...
Multivariate multiple linear regression is multiple linear regression, but with multiple responses. ...
Abstract Abstract Multivariate multiple linear regression is multiple linear regression, but with mu...
A rank estimator proposed by Aragón and Quiróz (1995) for the linear regression model with current-s...
Due to the rapid growth in data and access to various data sources, data has become complex and hete...
summary:In this paper a new rank test in a linear regression model is introduced. The test statistic...
Preliminary Do not distribute We consider a generalized regression model with a partially linear ind...
This paper considers tests for the rank of a matrix for which a root-T consistent estimator is avail...
AbstractReduced rank regression assumes that the coefficient matrix in a multivariate regression mod...
AbstractIn reduced-rank regression, a matrix of expectations is modeled as a lower rank matrix. In f...
There has recently been renewed research interest in the development of tests of the rank of a matri...
The present work proposes tests for reduced rank in multivariate regression coefficient matrices, un...
Reduced-rank restrictions can add useful parsimony to coefficient matrices of multivariate models, b...
We propose a novel statistic to test the rank of a matrix. The rank statistic overcomes deficiencies...
We introduce a new criterion, the Rank Selection Criterion (RSC), for selecting the optimal reduced ...
SUMMARY. In the classical linear regression model with p dependent variables con-stituting the vecto...
Multivariate multiple linear regression is multiple linear regression, but with multiple responses. ...
Abstract Abstract Multivariate multiple linear regression is multiple linear regression, but with mu...
A rank estimator proposed by Aragón and Quiróz (1995) for the linear regression model with current-s...
Due to the rapid growth in data and access to various data sources, data has become complex and hete...
summary:In this paper a new rank test in a linear regression model is introduced. The test statistic...
Preliminary Do not distribute We consider a generalized regression model with a partially linear ind...
This paper considers tests for the rank of a matrix for which a root-T consistent estimator is avail...