AbstractThe null hypothesis that the error vectors in a multivariate linear model are independent is tested against the alternative hypothesis that they are dependent in some specified manner. This dependence is assumed to be due to common random components or autocorrelation over time. The testing problem is solved by classical invariance arguments under multinormality. The most powerful invariant test usually depends on the particular alternative and may even lack a closed form expression. Then the locally best test is derived. The power is maximized at the null hypothesis in the direction of some alternative. In most applications the direction where the maximization is performed does not enter the test. Then the locally uniformly best te...
In the context of the linear regression model in which some regression coefficients are of interest ...
In the context of the linear regression model in which some regression coefficients are of interest ...
Inference on the autocorrelation coefficient p of a linear regression model with first-order autoreg...
AbstractThe null hypothesis that the error vectors in a multivariate linear model are independent is...
AbstractNyblom (J. Multivariate Anal. 76 (2001) 294) has derived locally best invariant test for the...
Nyblom (J. Multivariate Anal. 76 (2001) 294) has derived locally best invariant test for the covaria...
Nyblom (J. Multivariate Anal. 76 (2001) 294) has derived locally best invariant test for the covaria...
This paper considers a class of hypothesis testing problems concerning the covariance matrix of the ...
AbstractNyblom (J. Multivariate Anal. 76 (2001) 294) has derived locally best invariant test for the...
summary:In regular multivariate regression model a test of linear hypothesis is dependent on a struc...
SUMMARY. In this article we study the problem of testing for equality of variances of k independent ...
In the context of the linear regression model in which some regression coefficients are of interest ...
We consider the general family of multivariate normal distributions where the mean vector lies in an...
In the context of the linear regression model in which some regression coefficients are of interest ...
Affine invariance is often considered a natural requirement when testing hypotheses in a multivariat...
In the context of the linear regression model in which some regression coefficients are of interest ...
In the context of the linear regression model in which some regression coefficients are of interest ...
Inference on the autocorrelation coefficient p of a linear regression model with first-order autoreg...
AbstractThe null hypothesis that the error vectors in a multivariate linear model are independent is...
AbstractNyblom (J. Multivariate Anal. 76 (2001) 294) has derived locally best invariant test for the...
Nyblom (J. Multivariate Anal. 76 (2001) 294) has derived locally best invariant test for the covaria...
Nyblom (J. Multivariate Anal. 76 (2001) 294) has derived locally best invariant test for the covaria...
This paper considers a class of hypothesis testing problems concerning the covariance matrix of the ...
AbstractNyblom (J. Multivariate Anal. 76 (2001) 294) has derived locally best invariant test for the...
summary:In regular multivariate regression model a test of linear hypothesis is dependent on a struc...
SUMMARY. In this article we study the problem of testing for equality of variances of k independent ...
In the context of the linear regression model in which some regression coefficients are of interest ...
We consider the general family of multivariate normal distributions where the mean vector lies in an...
In the context of the linear regression model in which some regression coefficients are of interest ...
Affine invariance is often considered a natural requirement when testing hypotheses in a multivariat...
In the context of the linear regression model in which some regression coefficients are of interest ...
In the context of the linear regression model in which some regression coefficients are of interest ...
Inference on the autocorrelation coefficient p of a linear regression model with first-order autoreg...