AbstractWe consider two hypothesis testing problems with N independent observations on a single m-vector, when m>N, and the N observations on the random m-vector are independently and identically distributed as multivariate normal with mean vector μ and covariance matrix Σ, both unknown. In the first problem, the m-vector is partitioned into two sub-vectors of dimensions m1 and m2, respectively, and we propose two tests for the independence of the two sub-vectors that are valid as (m,N)→∞. The asymptotic distribution of the test statistics under the hypothesis of independence is shown to be standard normal, and the power examined by simulations. The proposed tests perform better than the likelihood ratio test, although the latter can only b...
Modern measurement technology has enabled the capture of high-dimensional data by researchers and st...
In this article, we consider the problem of testing a linear hypothesis in a multivariate linear reg...
AbstractWe develop methods to compare multiple multivariate normally distributed samples which may b...
AbstractWe consider two hypothesis testing problems with N independent observations on a single m-ve...
AbstractThis article analyzes whether some existing tests for the p×p covariance matrix Σ of the N i...
AbstractFor normally distributed data from the k populations with m×m covariance matrices Σ1,…,Σk, w...
AbstractFor normally distributed data from the k populations with m×m covariance matrices Σ1,…,Σk, w...
AbstractIn this article, we consider the problem of testing a linear hypothesis in a multivariate li...
AbstractIn this article, we consider the problem of testing that the mean vector μ=0 in the model xj...
In this paper, new tests for the independence of two high-dimensional vectors are investigated. We c...
In this article, we develop a multivariate theory for analyzing multivariate datasets that have fewe...
In this paper, new tests for the independence of two high-dimensional vectors are investigated. We c...
This paper considers testing a covariance matrix Σ in the high dimensional setting where the dimensi...
In this paper, tests are developed for testing certain hypotheses on the covari-ance matrix Σ, when ...
Many applications of modern science involve a large number of parameters. In many cases, the ...
Modern measurement technology has enabled the capture of high-dimensional data by researchers and st...
In this article, we consider the problem of testing a linear hypothesis in a multivariate linear reg...
AbstractWe develop methods to compare multiple multivariate normally distributed samples which may b...
AbstractWe consider two hypothesis testing problems with N independent observations on a single m-ve...
AbstractThis article analyzes whether some existing tests for the p×p covariance matrix Σ of the N i...
AbstractFor normally distributed data from the k populations with m×m covariance matrices Σ1,…,Σk, w...
AbstractFor normally distributed data from the k populations with m×m covariance matrices Σ1,…,Σk, w...
AbstractIn this article, we consider the problem of testing a linear hypothesis in a multivariate li...
AbstractIn this article, we consider the problem of testing that the mean vector μ=0 in the model xj...
In this paper, new tests for the independence of two high-dimensional vectors are investigated. We c...
In this article, we develop a multivariate theory for analyzing multivariate datasets that have fewe...
In this paper, new tests for the independence of two high-dimensional vectors are investigated. We c...
This paper considers testing a covariance matrix Σ in the high dimensional setting where the dimensi...
In this paper, tests are developed for testing certain hypotheses on the covari-ance matrix Σ, when ...
Many applications of modern science involve a large number of parameters. In many cases, the ...
Modern measurement technology has enabled the capture of high-dimensional data by researchers and st...
In this article, we consider the problem of testing a linear hypothesis in a multivariate linear reg...
AbstractWe develop methods to compare multiple multivariate normally distributed samples which may b...