AbstractWe develop methods to compare multiple multivariate normally distributed samples which may be correlated. The methods are new in the context that no assumption is made about the correlations among the samples. Three types of null hypotheses are considered: equality of mean vectors, homogeneity of covariance matrices, and equality of both mean vectors and covariance matrices. We demonstrate that the likelihood ratio test statistics have finite-sample distributions that are functions of two independent Wishart variables and dependent on the covariance matrix of the combined multiple populations. Asymptotic calculations show that the likelihood ratio test statistics converge in distribution to central Chi-squared distributions under th...
The usual practice for testing homogeneity of several populations in terms of means and variances is...
AbstractThe classical problem of testing the equality of the covariance matrices from k⩾2 p-dimensio...
Mixed effects models are widely used to describe heterogeneity in a population. A crucial issue when...
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...
Exact and approximate likelihood ratio tests are derived for certain structures in multi-variate nor...
AbstractLet W be a p × p matrix distributed according to the Wishart distribution Wp(n, Φ) with Φ po...
In this paper we proposed a new statistical test for testing the covariance matrix in one population...
AbstractThis paper investigates the asymptotic properties of the likelihood ratio statistic for test...
It is shown, that the union of k elementary null hypotheses can be rejected at level #alpha#, whenev...
One-sided, two-sided unbiased and likelihood ratio tests for testing the equality of intraclass corr...
The authors address likelihood ratio statistics used to test simultaneously conditions on mean vecto...
A common problem in social, educational, behavioral and biological research is to investigate relati...
We consider the problem of testing for zero variance components in linear mixed models with correlat...
The log likelihood ratio is expanded for testing a simple null hypothesis against a sequence of alte...
The usual practice for testing homogeneity of several populations in terms of means and variances is...
AbstractThe classical problem of testing the equality of the covariance matrices from k⩾2 p-dimensio...
Mixed effects models are widely used to describe heterogeneity in a population. A crucial issue when...
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...
Exact and approximate likelihood ratio tests are derived for certain structures in multi-variate nor...
AbstractLet W be a p × p matrix distributed according to the Wishart distribution Wp(n, Φ) with Φ po...
In this paper we proposed a new statistical test for testing the covariance matrix in one population...
AbstractThis paper investigates the asymptotic properties of the likelihood ratio statistic for test...
It is shown, that the union of k elementary null hypotheses can be rejected at level #alpha#, whenev...
One-sided, two-sided unbiased and likelihood ratio tests for testing the equality of intraclass corr...
The authors address likelihood ratio statistics used to test simultaneously conditions on mean vecto...
A common problem in social, educational, behavioral and biological research is to investigate relati...
We consider the problem of testing for zero variance components in linear mixed models with correlat...
The log likelihood ratio is expanded for testing a simple null hypothesis against a sequence of alte...
The usual practice for testing homogeneity of several populations in terms of means and variances is...
AbstractThe classical problem of testing the equality of the covariance matrices from k⩾2 p-dimensio...
Mixed effects models are widely used to describe heterogeneity in a population. A crucial issue when...