Provable Sample-Efficient Sparse Phase Retrieval Initialized by Truncated Power Method

10/26/2022
by   Jian-Feng Cai, et al.
0

We study the sparse phase retrieval problem, recovering an s-sparse length-n signal from m magnitude-only measurements. Two-stage non-convex approaches have drawn much attention in recent studies for this problem. Despite non-convexity, many two-stage algorithms provably converge to the underlying solution linearly when appropriately initialized. However, in terms of sample complexity, the bottleneck of those algorithms often comes from the initialization stage. Although the refinement stage usually needs only m=Ω(slog n) measurements, the widely used spectral initialization in the initialization stage requires m=Ω(s^2log n) measurements to produce a desired initial guess, which causes the total sample complexity order-wisely more than necessary. To reduce the number of measurements, we propose a truncated power method to replace the spectral initialization for non-convex sparse phase retrieval algorithms. We prove that m=Ω(s̅ slog n) measurements, where s̅ is the stable sparsity of the underlying signal, are sufficient to produce a desired initial guess. When the underlying signal contains only very few significant components, the sample complexity of the proposed algorithm is m=Ω(slog n) and optimal. Numerical experiments illustrate that the proposed method is more sample-efficient than state-of-the-art algorithms.

READ FULL TEXT

page 22

page 23

research
12/15/2021

Sample-Efficient Sparse Phase Retrieval via Stochastic Alternating Minimization

In this work we propose a nonconvex two-stage stochastic alternating min...
research
12/12/2017

Sparse Phase Retrieval via Sparse PCA Despite Model Misspecification: A Simplified and Extended Analysis

We consider the problem of high-dimensional misspecified phase retrieval...
research
06/29/2021

Towards Sample-Optimal Compressive Phase Retrieval with Sparse and Generative Priors

Compressive phase retrieval is a popular variant of the standard compres...
research
10/13/2016

Phase Retrieval Meets Statistical Learning Theory: A Flexible Convex Relaxation

We propose a flexible convex relaxation for the phase retrieval problem ...
research
06/14/2019

A stochastic alternating minimizing method for sparse phase retrieval

Sparse phase retrieval plays an important role in many fields of applied...
research
03/11/2016

Median-Truncated Nonconvex Approach for Phase Retrieval with Outliers

This paper investigates the phase retrieval problem, which aims to recov...
research
03/07/2019

Rigorous Analysis of Spectral Methods for Random Orthogonal Matrices

Phase retrieval refers to algorithmic methods for recovering a signal fr...

Please sign up or login with your details

Forgot password? Click here to reset