Reshaped Wirtinger Flow and Incremental Algorithm for Solving Quadratic System of Equations
Huishuai Zhang, Yi Zhou, Yingbin Liang, Yuejie Chi

TL;DR
This paper introduces the Reshaped Wirtinger Flow (RWF) algorithm for phase retrieval, which reduces complexity and improves convergence speed over existing methods, and further develops an incremental version (IRWF) with proven linear convergence.
Contribution
The paper proposes RWF with a nonsmooth loss function that reduces computational complexity and matches sample efficiency of TWF, and introduces IRWF with linear convergence guarantees.
Findings
RWF converges geometrically with fewer measurements.
IRWF achieves linear convergence.
IRWF outperforms existing stochastic algorithms in experiments.
Abstract
We study the phase retrieval problem, which solves quadratic system of equations, i.e., recovers a vector from its magnitude measurements . We develop a gradient-like algorithm (referred to as RWF representing reshaped Wirtinger flow) by minimizing a nonconvex nonsmooth loss function. In comparison with existing nonconvex Wirtinger flow (WF) algorithm \cite{candes2015phase}, although the loss function becomes nonsmooth, it involves only the second power of variable and hence reduces the complexity. We show that for random Gaussian measurements, RWF enjoys geometric convergence to a global optimal point as long as the number of measurements is on the order of , the dimension of the unknown . This improves the sample complexity of WF, and achieves the same sample…
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Taxonomy
TopicsModel Reduction and Neural Networks · Advanced Numerical Methods in Computational Mathematics · Computer Graphics and Visualization Techniques
