JOURNAL ARTICLE

High-Dimensional Block Diagonal Covariance Structure Detection Using Singular Vectors

Jan O. Bauer

Year: 2024 Journal:   Journal of Computational and Graphical Statistics Vol: 34 (3)Pages: 1005-1016   Publisher: Taylor & Francis

Abstract

The assumption of independent subvectors arises in many aspects of multivariate analysis. In most real-world applications, however, we lack prior knowledge about the number of subvectors and the specific variables within each subvector. Yet, testing all these combinations is not feasible. For example, for a data matrix containing 15 variables, there are already 1,382,958,545 possible combinations. Given that zero correlation is a necessary condition for independence, independent subvectors exhibit a block diagonal covariance matrix. This article focuses on the detection of such block diagonal covariance structures in high-dimensional data and therefore also identifies uncorrelated subvectors. Our approach exploits the fact that the structure of the covariance matrix is mirrored by the structure of its eigenvectors. However, the true block diagonal structure is masked by noise in the sample case. To address this problem, we propose to use sparse approximations of the sample eigenvectors to reveal the sparse structure of the population eigenvectors. Notably, the right singular vectors of a data matrix with an overall mean of zero are identical to the sample eigenvectors of its covariance matrix. Using sparse approximations of these singular vectors instead of the eigenvectors makes the estimation of the covariance matrix obsolete. We demonstrate the performance of our method through simulations and provide real data examples. Supplementary materials for this article are available online.

Keywords:
Covariance Diagonal Mathematics Block (permutation group theory) Algorithm Covariance matrix Estimation of covariance matrices Computer science Combinatorics Applied mathematics Pattern recognition (psychology) Artificial intelligence Statistics Geometry

Metrics

1
Cited By
3.07
FWCI (Field Weighted Citation Impact)
77
Refs
0.86
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

Advanced Statistical Methods and Models
Physical Sciences →  Mathematics →  Statistics and Probability
Remote-Sensing Image Classification
Physical Sciences →  Engineering →  Media Technology
Statistical Methods and Inference
Physical Sciences →  Mathematics →  Statistics and Probability

Related Documents

JOURNAL ARTICLE

Block-diagonal test for high-dimensional covariance matrices

Jiayu LaiXiaoyi WangKaige ZhaoShurong Zheng

Journal:   Test Year: 2022 Vol: 32 (1)Pages: 447-466
JOURNAL ARTICLE

Testing block-diagonal covariance structure for high-dimensional data under non-normality

Yuki YamadaMasashi HyodoTakahiro Nishiyama

Journal:   Journal of Multivariate Analysis Year: 2017 Vol: 155 Pages: 305-316
JOURNAL ARTICLE

Block-Diagonal Covariance Selection for High-Dimensional Gaussian Graphical Models

Émilie DevijverMélina Gallopin

Journal:   Journal of the American Statistical Association Year: 2016 Vol: 113 (521)Pages: 306-314
JOURNAL ARTICLE

Testing super-diagonal structure in high dimensional covariance matrices

Jing HeSong Xi Chen

Journal:   Journal of Econometrics Year: 2016 Vol: 194 (2)Pages: 283-297
© 2026 ScienceGate Book Chapters — All rights reserved.