scholarly journals Some Tests Concerning the Covariance Matrix in High Dimensional Data

2005 ◽  
Vol 35 (2) ◽  
pp. 251-272 ◽  
Author(s):  
Muni S. Srivastava
2010 ◽  
Vol 101 (10) ◽  
pp. 2554-2570 ◽  
Author(s):  
Thomas J. Fisher ◽  
Xiaoqian Sun ◽  
Colin M. Gallagher

Author(s):  
Ya-nan Song ◽  
Xuejing Zhao

The testing of high-dimensional normality has been an important issue and has been intensively studied in literatures, it depends on the Variance-Covariance matrix of the sample, numerous methods have been proposed to reduce the complex of the Variance-Covariance matrix. The principle component analysis(PCA) was widely used since it can project the high-dimensional data into lower dimensional orthogonal space, and the normality of the reduced data can be evaluated by Jarque-Bera(JB) statistic on each principle direction. We propose two combined statistics, the summation and the maximum of one-way JB statistics, upon the independency of each principle direction, to test the multivariate normality of data in high dimensions. The performance of the proposed methods is illustrated by the empirical power of the simulated data of normal data and non-normal data. Two real examples show the validity of our proposed methods.


Separations ◽  
2021 ◽  
Vol 8 (11) ◽  
pp. 205
Author(s):  
Adam Mieldzioc ◽  
Monika Mokrzycka ◽  
Aneta Sawikowska

Modern investigation techniques (e.g., metabolomic, proteomic, lipidomic, genomic, transcriptomic, phenotypic), allow to collect high-dimensional data, where the number of observations is smaller than the number of features. In such cases, for statistical analyzing, standard methods cannot be applied or lead to ill-conditioned estimators of the covariance matrix. To analyze the data, we need an estimator of the covariance matrix with good properties (e.g., positive definiteness), and therefore covariance matrix identification is crucial. The paper presents an approach to determine the block-structured estimator of the covariance matrix based on an example of metabolomic data on the drought resistance of barley. This method can be used in many fields of science, e.g., in agriculture, medicine, food and nutritional sciences, toxicology, functional genomics and nutrigenomics.


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