4.3 Article

The spectral norm of random inner-product kernel matrices

期刊

PROBABILITY THEORY AND RELATED FIELDS
卷 173, 期 1-2, 页码 27-85

出版社

SPRINGER HEIDELBERG
DOI: 10.1007/s00440-018-0830-4

关键词

Random matrix; Operator norm; Free probability; Covariance thresholding

资金

  1. Hertz Foundation Fellowship
  2. NDSEG Fellowship (DoD, Air Force Office of Scientific Research) [32 CFR 168a]
  3. NSF [CCF-1319979, DMS-1106627]
  4. AFOSR Grant [FA9550-13-1-0036]

向作者/读者索取更多资源

We study an inner-product kernel random matrix model, whose empirical spectral distribution was shown by Xiuyuan Cheng and Amit Singer to converge to a deterministic measure in the large n and p limit. We provide an interpretation of this limit measure as the additive free convolution of a semicircle law and a Marchenko-Pastur law. By comparing the tracial moments of this matrix to an additive deformation of a Wigner matrix, we establish that for odd kernel functions, the spectral norm of this matrix converges almost surely to the edge of the limiting spectrum. Our study is motivated by the analysis of a covariance thresholding procedure for the statistical detection and estimation of sparse principal components, and our results characterize the limit of the largest eigenvalue of the thresholded sample covariance matrix in the null setting.

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