In this paper we proposed a new statistical test for testing the covariance matrix in one population under multivariate normal assumption. In general, the proposed and the likelihood-ratio tests resulted in larger values of estimated powers than VMAX for bivariate and trivariate cases. VMAX was not sensitive to general changes in the covariance (correlation) structure. The advantage of the new test is that it is based on the comparison of all elements of the postulated covariance matrix under the null hypothesis with their respective maximum likelihood sample estimates and therefore, it does not restrict the information of the covariance matrix into a scalar number such as the determinant or trace, for example. Due to the fact that it is ba...
In this article, we address the problem of simultaneous testing hypothesis about mean and covariance...
In this article, we address the problem of simultaneous testing hypothesis about mean and covariance...
The stability of covariance matrix is a major issue in multivariate analysis. As can be seen in the ...
AbstractWe consider two hypothesis testing problems with N independent observations on a single m-ve...
A simple statistic is proposed for testing the equality of the covariance matrices of several multiv...
We consider the general family of multivariate normal distributions where the mean vector lies in an...
A simple statistic is proposed for testing the equality of the covariance matrices of several multiv...
We develop methods to compare multiple multivariate normally distributed samples which may be correl...
AbstractWe develop methods to compare multiple multivariate normally distributed samples which may b...
AbstractFor normally distributed data from the k populations with m×m covariance matrices Σ1,…,Σk, w...
AbstractThis paper considers three types of problems: (i) the problem of independence of two sets, (...
Let samples from d multivariate normal populations be given with unknown covariance matrices [Sigma]...
summary:Test statistics for testing some hypotheses on characteristic roots of covariance matrices a...
In this paper, tests are developed for testing certain hypotheses on the covari-ance matrix Σ, when ...
AbstractThe classical problem of testing the equality of the covariance matrices from k⩾2 p-dimensio...
In this article, we address the problem of simultaneous testing hypothesis about mean and covariance...
In this article, we address the problem of simultaneous testing hypothesis about mean and covariance...
The stability of covariance matrix is a major issue in multivariate analysis. As can be seen in the ...
AbstractWe consider two hypothesis testing problems with N independent observations on a single m-ve...
A simple statistic is proposed for testing the equality of the covariance matrices of several multiv...
We consider the general family of multivariate normal distributions where the mean vector lies in an...
A simple statistic is proposed for testing the equality of the covariance matrices of several multiv...
We develop methods to compare multiple multivariate normally distributed samples which may be correl...
AbstractWe develop methods to compare multiple multivariate normally distributed samples which may b...
AbstractFor normally distributed data from the k populations with m×m covariance matrices Σ1,…,Σk, w...
AbstractThis paper considers three types of problems: (i) the problem of independence of two sets, (...
Let samples from d multivariate normal populations be given with unknown covariance matrices [Sigma]...
summary:Test statistics for testing some hypotheses on characteristic roots of covariance matrices a...
In this paper, tests are developed for testing certain hypotheses on the covari-ance matrix Σ, when ...
AbstractThe classical problem of testing the equality of the covariance matrices from k⩾2 p-dimensio...
In this article, we address the problem of simultaneous testing hypothesis about mean and covariance...
In this article, we address the problem of simultaneous testing hypothesis about mean and covariance...
The stability of covariance matrix is a major issue in multivariate analysis. As can be seen in the ...