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Spiked separable covariance matrices and principal components

Spiked separable covariance matrices and principal components

29 May 2019
Xiucai Ding
Fan Yang
ArXivPDFHTML

Papers citing "Spiked separable covariance matrices and principal components"

5 / 5 papers shown
Title
Learning Low-Dimensional Nonlinear Structures from High-Dimensional
  Noisy Data: An Integral Operator Approach
Learning Low-Dimensional Nonlinear Structures from High-Dimensional Noisy Data: An Integral Operator Approach
Xiucai Ding
Rongkai Ma
38
9
0
28 Feb 2022
Precise High-Dimensional Asymptotics for Quantifying Heterogeneous Transfers
Precise High-Dimensional Asymptotics for Quantifying Heterogeneous Transfers
Fan Yang
Hongyang R. Zhang
Sen Wu
Christopher Ré
Weijie J. Su
58
10
0
22 Oct 2020
Linear spectral statistics of eigenvectors of anisotropic sample
  covariance matrices
Linear spectral statistics of eigenvectors of anisotropic sample covariance matrices
Fan Yang
9
9
0
03 May 2020
How to reduce dimension with PCA and random projections?
How to reduce dimension with PCA and random projections?
Fan Yang
Sifan Liu
Yan Sun
David P. Woodruff
27
28
0
01 May 2020
Rapid evaluation of the spectral signal detection threshold and
  Stieltjes transform
Rapid evaluation of the spectral signal detection threshold and Stieltjes transform
W. Leeb
19
7
0
26 Apr 2019
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