The Phase Transition of Matrix Recovery from Gaussian Measurements Matches the Minimax MSE of Matrix Denoising
David L. Donoho, Matan Gavish, Andrea Montanari

TL;DR
This paper demonstrates that the phase transition curve for successful matrix recovery from Gaussian measurements matches the minimax mean squared error curve for low-rank matrix denoising, revealing a fundamental connection between these problems.
Contribution
It establishes a surprising equivalence between the phase transition in matrix recovery and the minimax MSE in matrix denoising for low-rank matrices.
Findings
Phase transition curve matches minimax MSE curve.
Empirical evidence supports the theoretical connection.
Results hold for any rank fraction between 0 and 1.
Abstract
Let be an unknown by matrix. In matrix recovery, one takes linear measurements of , where and each is a by matrix. For measurement matrices with Gaussian i.i.d entries, it known that if is of low rank, it is recoverable from just a few measurements. A popular approach for matrix recovery is Nuclear Norm Minimization (NNM). Empirical work reveals a \emph{phase transition} curve, stated in terms of the undersampling fraction , rank fraction and aspect ratio . Specifically, a curve exists such that, if , NNM typically succeeds, while if , it typically fails. An apparently quite different problem is matrix denoising in Gaussian noise, where an unknown by …
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