Misspecified Nonconvex Statistical Optimization for Phase Retrieval
Machine Learning
2017-12-19 v1 Machine Learning
Optimization and Control
Abstract
Existing nonconvex statistical optimization theory and methods crucially rely on the correct specification of the underlying "true" statistical models. To address this issue, we take a first step towards taming model misspecification by studying the high-dimensional sparse phase retrieval problem with misspecified link functions. In particular, we propose a simple variant of the thresholded Wirtinger flow algorithm that, given a proper initialization, linearly converges to an estimator with optimal statistical accuracy for a broad family of unknown link functions. We further provide extensive numerical experiments to support our theoretical findings.
Cite
@article{arxiv.1712.06245,
title = {Misspecified Nonconvex Statistical Optimization for Phase Retrieval},
author = {Zhuoran Yang and Lin F. Yang and Ethan X. Fang and Tuo Zhao and Zhaoran Wang and Matey Neykov},
journal= {arXiv preprint arXiv:1712.06245},
year = {2017}
}
Comments
56 pages