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Universality of Linearized Message Passing for Phase Retrieval with Structured Sensing Matrices

24 August 2020
Rishabh Dudeja
Milad Bakhshizadeh
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Abstract

In the phase retrieval problem one seeks to recover an unknown nnn dimensional signal vector x\mathbf{x}x from mmm measurements of the form yi=∣(Ax)i∣y_i = |(\mathbf{A} \mathbf{x})_i|yi​=∣(Ax)i​∣, where A\mathbf{A}A denotes the sensing matrix. Many algorithms for this problem are based on approximate message passing. For these algorithms, it is known that if the sensing matrix A\mathbf{A}A is generated by sub-sampling nnn columns of a uniformly random (i.e., Haar distributed) orthogonal matrix, in the high dimensional asymptotic regime (m,n→∞,n/m→κm,n \rightarrow \infty, n/m \rightarrow \kappam,n→∞,n/m→κ), the dynamics of the algorithm are given by a deterministic recursion known as the state evolution. For a special class of linearized message-passing algorithms, we show that the state evolution is universal: it continues to hold even when A\mathbf{A}A is generated by randomly sub-sampling columns of the Hadamard-Walsh matrix, provided the signal is drawn from a Gaussian prior.

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