English

Approximate Message Passing for Amplitude Based Optimization

Information Theory 2018-06-11 v1 math.IT

Abstract

We consider an 2\ell_2-regularized non-convex optimization problem for recovering signals from their noisy phaseless observations. We design and study the performance of a message passing algorithm that aims to solve this optimization problem. We consider the asymptotic setting m,nm,n \rightarrow \infty, m/nδm/n \rightarrow \delta and obtain sharp performance bounds, where mm is the number of measurements and nn is the signal dimension. We show that for complex signals the algorithm can perform accurate recovery with only m=(64π24)n2.5nm=\left ( \frac{64}{\pi^2}-4\right)n\approx 2.5n measurements. Also, we provide sharp analysis on the sensitivity of the algorithm to noise. We highlight the following facts about our message passing algorithm: (i) Adding 2\ell_2 regularization to the non-convex loss function can be beneficial even in the noiseless setting; (ii) spectral initialization has marginal impact on the performance of the algorithm.

Keywords

Cite

@article{arxiv.1806.03276,
  title  = {Approximate Message Passing for Amplitude Based Optimization},
  author = {Junjie Ma and Ji Xu and Arian Maleki},
  journal= {arXiv preprint arXiv:1806.03276},
  year   = {2018}
}

Comments

accepted by ICML; short version of arXiv:1801.01170 with more simulations and other discussions