Linear convergence of randomized Kaczmarz method for solving complex-valued phaseless equations

Meng-zhi Huang, Yang Wang
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引用次数: 9

Abstract

A randomized Kaczmarz method was recently proposed for phase retrieval, which has been shown numerically to exhibit empirical performance over other state-of-the-art phase retrieval algorithms both in terms of the sampling complexity and in terms of computation time. While the rate of convergence has been studied well in the real case where the signals and measurement vectors are all real-valued, there is no guarantee for the convergence in the complex case. In fact, the linear convergence of the randomized Kaczmarz method for phase retrieval in the complex setting is left as a conjecture by Tan and Vershynin. In this paper, we provide the first theoretical guarantees for it. We show that for random measurements $\mathbf{a}_j \in \mathbb{C}^n, j=1,\ldots,m $ which are drawn independently and uniformly from the complex unit sphere, or equivalent are independent complex Gaussian random vectors, when $m \ge Cn$ for some universal positive constant $C$, the randomized Kaczmarz scheme with a good initialization converges linearly to the target solution (up to a global phase) in expectation with high probability. This gives a positive answer to that conjecture.
求解复值无相方程的随机Kaczmarz方法的线性收敛性
最近提出了一种用于相位检索的随机Kaczmarz方法,该方法在采样复杂度和计算时间方面都比其他最先进的相位检索算法表现出经验性能。虽然在信号和测量向量均为实值的实际情况下,收敛速度已经得到了很好的研究,但在复情况下,收敛速度并不能得到保证。实际上,在复杂情况下,随机化Kaczmarz方法的相位恢复的线性收敛性是Tan和Vershynin留下的一个猜想。本文为其提供了第一个理论保证。我们证明了从复单位球独立均匀地绘制的随机测量值$\mathbf{a}_j \in \mathbb{C}^n, j=1,\ldots,m $是独立的复高斯随机向量,当$m \ge Cn$对于某个普遍正常数$C$时,具有良好初始化的随机Kaczmarz格式在期望中高概率线性收敛到目标解(直到一个全局相位)。这给了那个猜想一个肯定的答案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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