Literature DB >> 34305194

ASYMMETRY HELPS: EIGENVALUE AND EIGENVECTOR ANALYSES OF ASYMMETRICALLY PERTURBED LOW-RANK MATRICES.

Yuxin Chen1, Chen Cheng2, Jianqing Fan1.   

Abstract

This paper is concerned with the interplay between statistical asymmetry and spectral methods. Suppose we are interested in estimating a rank-1 and symmetric matrix M ⋆ ∈ ℝ n × n , yet only a randomly perturbed version M is observed. The noise matrix M - M ⋆ is composed of independent (but not necessarily homoscedastic) entries and is, therefore, not symmetric in general. This might arise if, for example, we have two independent samples for each entry of M ⋆ and arrange them in an asymmetric fashion. The aim is to estimate the leading eigenvalue and the leading eigenvector of M ⋆. We demonstrate that the leading eigenvalue of the data matrix M can be O ( n ) times more accurate (up to some log factor) than its (unadjusted) leading singular value of M in eigenvalue estimation. Moreover, the eigen-decomposition approach is fully adaptive to heteroscedasticity of noise, without the need of any prior knowledge about the noise distributions. In a nutshell, this curious phenomenon arises since the statistical asymmetry automatically mitigates the bias of the eigenvalue approach, thus eliminating the need of careful bias correction. Additionally, we develop appealing non-asymptotic eigenvector perturbation bounds; in particular, we are able to bound the perterbation of any linear function of the leading eigenvector of M (e.g. entrywise eigenvector perturbation). We also provide partial theory for the more general rank-r case. The takeaway message is this: arranging the data samples in an asymmetric manner and performing eigen-decomposition could sometimes be quite beneficial.

Keywords:  asymmetric matrices; eigenvalue perturbation; entrywise eigenvector perturbation; heteroscedasticity; linear form of eigenvectors

Year:  2021        PMID: 34305194      PMCID: PMC8300484          DOI: 10.1214/20-aos1963

Source DB:  PubMed          Journal:  Ann Stat        ISSN: 0090-5364            Impact factor:   4.028


  6 in total

1.  Spectrum of large random asymmetric matrices.

Authors: 
Journal:  Phys Rev Lett       Date:  1988-05-09       Impact factor: 9.161

2.  ENTRYWISE EIGENVECTOR ANALYSIS OF RANDOM MATRICES WITH LOW EXPECTED RANK.

Authors:  Emmanuel Abbe; Jianqing Fan; Kaizheng Wang; Yiqiao Zhong
Journal:  Ann Stat       Date:  2020-07-17       Impact factor: 4.028

3.  On Consistency and Sparsity for Principal Components Analysis in High Dimensions.

Authors:  Iain M Johnstone; Arthur Yu Lu
Journal:  J Am Stat Assoc       Date:  2009-06-01       Impact factor: 5.033

4.  SPECTRAL METHOD AND REGULARIZED MLE ARE BOTH OPTIMAL FOR TOP-K RANKING.

Authors:  Yuxin Chen; Jianqing Fan; Cong Ma; Kaizheng Wang
Journal:  Ann Stat       Date:  2019-05-21       Impact factor: 4.028

5.  An l Eigenvector Perturbation Bound and Its Application to Robust Covariance Estimation.

Authors:  Jianqing Fan; Weichen Wang; Yiqiao Zhong
Journal:  J Mach Learn Res       Date:  2018-04       Impact factor: 3.654

6.  Inference and uncertainty quantification for noisy matrix completion.

Authors:  Yuxin Chen; Jianqing Fan; Cong Ma; Yuling Yan
Journal:  Proc Natl Acad Sci U S A       Date:  2019-10-30       Impact factor: 11.205

  6 in total

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