The covariance matrices are essential quantities in econometric and statistical applications including portfolio allocation, asset pricing and factor analysis. Testing the entire covariance under high dimensionality endures large variability and causes a dilution of the signal-to-noise ratio and hence a reduction in the power. We consider a more powerful test procedure that focuses on testing along the super-diagonals of the high dimensional covariance matrix, which can infer more accurately on the structure of the covariance. We show that the test is powerful in detecting sparse signals and parametric structures in the covariance. The properties of the test are demonstrated by theoretical analyses, simulation and empirical studies. (C) 201...
The stability of covariance matrix is a major issue in multivariate analysis. As can be seen in the ...
Test statistics for sphericity and identity of the covariance matrix are presented, when the data ar...
International audienceThis paper is devoted to the problem of testing equality between the covarianc...
Statisticians are interested in testing the structure of covariance matrices, especially under the h...
In multivariate analysis, the covariance matrix associated with a set of variables of interest (name...
This thesis is concerned about statistical inference for the population covariance matrix in the hig...
In this paper we propose a new test procedure for sphericity of the covariance matrix when the dimen...
We consider the equality test of high-dimensional covariance matrices under the strongly spiked eige...
Abstract : The equality of covariance matrices is an essential assumption in means and discriminant...
Multivariate statistical analyses, such as linear discriminant analysis, MANOVA, and profile analysi...
This paper analyzes whether standard covariance matrix tests work when dimensionality is large, and ...
The matrix-variate normal distribution is a popular model for high-dimensional transposable data bec...
We propose two tests for the equality of covariance matrices between two high-dimensional population...
In this paper, tests are developed for testing certain hypotheses on the covari-ance matrix Σ, when ...
The stability of covariance matrix is a major issue in multivariate analysis. As can be seen in the ...
The stability of covariance matrix is a major issue in multivariate analysis. As can be seen in the ...
Test statistics for sphericity and identity of the covariance matrix are presented, when the data ar...
International audienceThis paper is devoted to the problem of testing equality between the covarianc...
Statisticians are interested in testing the structure of covariance matrices, especially under the h...
In multivariate analysis, the covariance matrix associated with a set of variables of interest (name...
This thesis is concerned about statistical inference for the population covariance matrix in the hig...
In this paper we propose a new test procedure for sphericity of the covariance matrix when the dimen...
We consider the equality test of high-dimensional covariance matrices under the strongly spiked eige...
Abstract : The equality of covariance matrices is an essential assumption in means and discriminant...
Multivariate statistical analyses, such as linear discriminant analysis, MANOVA, and profile analysi...
This paper analyzes whether standard covariance matrix tests work when dimensionality is large, and ...
The matrix-variate normal distribution is a popular model for high-dimensional transposable data bec...
We propose two tests for the equality of covariance matrices between two high-dimensional population...
In this paper, tests are developed for testing certain hypotheses on the covari-ance matrix Σ, when ...
The stability of covariance matrix is a major issue in multivariate analysis. As can be seen in the ...
The stability of covariance matrix is a major issue in multivariate analysis. As can be seen in the ...
Test statistics for sphericity and identity of the covariance matrix are presented, when the data ar...
International audienceThis paper is devoted to the problem of testing equality between the covarianc...