AbstractIn reduced-rank regression, a matrix of expectations is modeled as a lower rank matrix. In factor analysis, a covariance matrix is modeled as a linear function of a diagonal matrix and a lower rank matrix. A common set of test procedures can be applied to both models when the following conditions are met: the rank of the lower rank matrix is small, the diagonal matrix in the factor model is an identity, and the reduced-rank regression model is not replicated. This paper gives three results for making inferences under these conditions: (1) It is shown that locally best invariant test of sphericity in the factor analysis model is identical to the locally best invariant test of rank-O against rank-r in the reduced-rank model, provided ...
This thesis is concerned about statistical inference for the population covariance matrix in the hig...
SUMMARY. In the classical linear regression model with p dependent variables con-stituting the vecto...
We propose a test for a covariance matrix to have Kronecker Product Structure (KPS). KPS implies a r...
AbstractIn reduced-rank regression, a matrix of expectations is modeled as a lower rank matrix. In f...
AbstractReduced rank regression assumes that the coefficient matrix in a multivariate regression mod...
We propose a novel statistic to test the rank of a matrix. The rank statistic overcomes deficiencies...
We consider in m x m covariance matrices, Sigma(1) and Sigma(2), which satisfy Sigma(2) - Sigma(1) =...
The present work proposes tests for reduced rank in multivariate regression coefficient matrices, un...
We consider m × m covariance matrices, Σ1 and Σ2, which satisfy Σ2 - Σ1 = Δ, where Δ has a specified...
There has recently been renewed research interest in the development of tests of the rank of a matri...
We propose a novel statistic to test the rank of a matrix. The rank statistic overcomes deficiencies...
Abstract Abstract Multivariate multiple linear regression is multiple linear regression, but with mu...
AbstractThis paper characterises completely the circumstances in which maximum likelihood estimation...
We propose a test for a covariance matrix to have Kronecker Product Structure (KPS). KPS implies a r...
Multivariate multiple linear regression is multiple linear regression, but with multiple responses. ...
This thesis is concerned about statistical inference for the population covariance matrix in the hig...
SUMMARY. In the classical linear regression model with p dependent variables con-stituting the vecto...
We propose a test for a covariance matrix to have Kronecker Product Structure (KPS). KPS implies a r...
AbstractIn reduced-rank regression, a matrix of expectations is modeled as a lower rank matrix. In f...
AbstractReduced rank regression assumes that the coefficient matrix in a multivariate regression mod...
We propose a novel statistic to test the rank of a matrix. The rank statistic overcomes deficiencies...
We consider in m x m covariance matrices, Sigma(1) and Sigma(2), which satisfy Sigma(2) - Sigma(1) =...
The present work proposes tests for reduced rank in multivariate regression coefficient matrices, un...
We consider m × m covariance matrices, Σ1 and Σ2, which satisfy Σ2 - Σ1 = Δ, where Δ has a specified...
There has recently been renewed research interest in the development of tests of the rank of a matri...
We propose a novel statistic to test the rank of a matrix. The rank statistic overcomes deficiencies...
Abstract Abstract Multivariate multiple linear regression is multiple linear regression, but with mu...
AbstractThis paper characterises completely the circumstances in which maximum likelihood estimation...
We propose a test for a covariance matrix to have Kronecker Product Structure (KPS). KPS implies a r...
Multivariate multiple linear regression is multiple linear regression, but with multiple responses. ...
This thesis is concerned about statistical inference for the population covariance matrix in the hig...
SUMMARY. In the classical linear regression model with p dependent variables con-stituting the vecto...
We propose a test for a covariance matrix to have Kronecker Product Structure (KPS). KPS implies a r...