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Singular vector and singular subspace distribution for the matrix denoising model

27 September 2018
Z. Bao
Xiucai Ding
Ke Wang
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Abstract

In this paper, we study the matrix denosing model Y=S+XY=S+XY=S+X, where SSS is a low-rank deterministic signal matrix and XXX is a random noise matrix, and both are M×nM\times nM×n. In the scenario that MMM and nnn are comparably large and the signals are supercritical, we study the fluctuation of the outlier singular vectors of YYY. More specifically, we derive the limiting distribution of angles between the principal singular vectors of YYY and their deterministic counterparts, the singular vectors of SSS. Further, we also derive the distribution of the distance between the subspace spanned by the principal singular vectors of YYY and that spanned by the singular vectors of SSS. It turns out that the limiting distributions depend on the structure of the singular vectors of SSS and the distribution of XXX, and thus they are non-universal.

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