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High dimensional deformed rectangular matrices with applications in matrix denoising

22 February 2017
Xiucai Ding
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Abstract

We consider the recovery of a low rank M×NM \times NM×N matrix SSS from its noisy observation S~\tilde{S}S~ in two different regimes. Under the assumption that MMM is comparable to NNN, we propose two consistent estimators for SSS. Our analysis relies on the local behavior of the large dimensional rectangular matrices with finite rank perturbation. We also derive the convergent limits and rates for the singular values and vectors of such matrices.

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