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Matrices with Gaussian noise: optimal estimates for singular subspace perturbation

2 March 2018
Sean O’Rourke
Van Vu
Ke Wang
ArXiv (abs)PDFHTML
Abstract

The Davis-Kahan-Wedin sin⁡Θ\sin \ThetasinΘ theorem describes how the singular subspaces of a matrix change when subjected to a small perturbation. This classic result is sharp in the worst case scenario. In this paper, we prove a stochastic version of the Davis-Kahan-Wedin sin⁡Θ\sin \ThetasinΘ theorem when the perturbation is a Gaussian random matrix. Under certain structural assumptions, we obtain an optimal bound that significantly improves upon the classic Davis-Kahan-Wedin sin⁡Θ\sin \ThetasinΘ theorem. One of our key tools is a new perturbation bound for the singular values, which may be of independent interest.

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