Phase Retrieval by Alternating Minimization with Random Initialization

Abstract
We consider a phase retrieval problem, where the goal is to reconstruct a -dimensional complex vector from its phaseless scalar products with sensing vectors, independently sampled from complex normal distributions. We show that, with a random initialization, the classical algorithm of alternating minimization succeeds with high probability as when for some . This is a step toward proving the conjecture in \cite{Waldspurger2016}, which conjectures that the algorithm succeeds when . The analysis depends on an approach that enables the decoupling of the dependency between the algorithmic iterates and the sensing vectors.
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