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Phase retrieval in high dimensions: Statistical and computational phase transitions

9 June 2020
Antoine Maillard
Bruno Loureiro
Florent Krzakala
Lenka Zdeborová
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Abstract

We consider the phase retrieval problem of reconstructing a nnn-dimensional real or complex signal X⋆\mathbf{X}^{\star}X⋆ from mmm (possibly noisy) observations Yμ=∣∑i=1nΦμiXi⋆/n∣Y_\mu = | \sum_{i=1}^n \Phi_{\mu i} X^{\star}_i/\sqrt{n}|Yμ​=∣∑i=1n​Φμi​Xi⋆​/n​∣, for a large class of correlated real and complex random sensing matrices Φ\mathbf{\Phi}Φ, in a high-dimensional setting where m,n→∞m,n\to\inftym,n→∞ while α=m/n=Θ(1)\alpha = m/n=\Theta(1)α=m/n=Θ(1). First, we derive sharp asymptotics for the lowest possible estimation error achievable statistically and we unveil the existence of sharp phase transitions for the weak- and full-recovery thresholds as a function of the singular values of the matrix Φ\mathbf{\Phi}Φ. This is achieved by providing a rigorous proof of a result first obtained by the replica method from statistical mechanics. In particular, the information-theoretic transition to perfect recovery for full-rank matrices appears at α=1\alpha=1α=1 (real case) and α=2\alpha=2α=2 (complex case). Secondly, we analyze the performance of the best-known polynomial time algorithm for this problem -- approximate message-passing -- establishing the existence of a statistical-to-algorithmic gap depending, again, on the spectral properties of Φ\mathbf{\Phi}Φ. Our work provides an extensive classification of the statistical and algorithmic thresholds in high-dimensional phase retrieval for a broad class of random matrices.

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