AbstractThe assumption of homogeneity of covariance matrices is the fundamental prerequisite of a number of classical procedures in multivariate analysis. Despite its importance and long history, however, this problem so far has not been completely settled beyond the traditional and highly unrealistic context of multivariate Gaussian models. And the modified likelihood ratio tests (MLRT) that are used in everyday practice are known to be highly sensitive to violations of Gaussian assumptions. In this paper, we provide a complete and systematic study of the problem, and propose test statistics which, while preserving the optimality features of the MLRT under multinormal assumptions, remain valid under unspecified elliptical densities with fi...
Abstract. Statistical models of unobserved heterogeneity are typically formalized as mix-tures of si...
One-sample and multi-sample tests on the concentration parameter of Fisher-von Mises-Langevin distri...
Multivariate statistical analyses, such as linear discriminant analysis, MANOVA, and profile analysi...
The assumption of homogeneity of covariance matrices is the fundamental prerequisite of a number of ...
A general method for constructing pseudo-Gaussian tests—reducing to tradi-tional Gaussian tests unde...
We propose a class of locally and asymptotically optimal tests, based on multivariate ranks and sign...
This paper provides optimal testing procedures for the m-sample null hypothesis of Common Principal ...
The likelihood ratio test for m-sample homogeneity of covariance is notoriously sensitive to violati...
AbstractChernoff and Savage [Asymptotic normality and efficiency of certain non-parametric tests, An...
This dissertation consists three chapters with a central theme on unobserved heterogeneity in econom...
This paper provides optimal testing procedures for the m-sample null hypothesis of Common Principal ...
peer reviewedAlthough the assumption of elliptical symmetry is quite common in multivariate analysis...
Mixture models provide a natural framework for unobserved heterogeneity in a population. They are ...
AbstractThe modified likelihood ratio criterion for testing the homogeneity of variances of p univar...
Chernoff and Savage [Asymptotic normality and efficiency of certain non-parametric tests, Ann. Math....
Abstract. Statistical models of unobserved heterogeneity are typically formalized as mix-tures of si...
One-sample and multi-sample tests on the concentration parameter of Fisher-von Mises-Langevin distri...
Multivariate statistical analyses, such as linear discriminant analysis, MANOVA, and profile analysi...
The assumption of homogeneity of covariance matrices is the fundamental prerequisite of a number of ...
A general method for constructing pseudo-Gaussian tests—reducing to tradi-tional Gaussian tests unde...
We propose a class of locally and asymptotically optimal tests, based on multivariate ranks and sign...
This paper provides optimal testing procedures for the m-sample null hypothesis of Common Principal ...
The likelihood ratio test for m-sample homogeneity of covariance is notoriously sensitive to violati...
AbstractChernoff and Savage [Asymptotic normality and efficiency of certain non-parametric tests, An...
This dissertation consists three chapters with a central theme on unobserved heterogeneity in econom...
This paper provides optimal testing procedures for the m-sample null hypothesis of Common Principal ...
peer reviewedAlthough the assumption of elliptical symmetry is quite common in multivariate analysis...
Mixture models provide a natural framework for unobserved heterogeneity in a population. They are ...
AbstractThe modified likelihood ratio criterion for testing the homogeneity of variances of p univar...
Chernoff and Savage [Asymptotic normality and efficiency of certain non-parametric tests, Ann. Math....
Abstract. Statistical models of unobserved heterogeneity are typically formalized as mix-tures of si...
One-sample and multi-sample tests on the concentration parameter of Fisher-von Mises-Langevin distri...
Multivariate statistical analyses, such as linear discriminant analysis, MANOVA, and profile analysi...