Misspecified nonconvex statistical optimization for sparse phase retrieval

被引:0
|
作者
Zhuoran Yang
Lin F. Yang
Ethan X. Fang
Tuo Zhao
Zhaoran Wang
Matey Neykov
机构
[1] Princeton University,Department of Operations Research and Financial Engineering
[2] Pennsylvania State University,Department of Statistics
[3] Pennsylvania State University,Department of Industrial and Manufacturing Engineering
[4] Georgia Institute of Technology,School of Industrial and Systems Engineering
[5] Georgia Institute of Technology,School of Computational Science and Engineering
[6] Northwestern University,Department of Industrial Engineering and Management Science
[7] Carnegie Mellon University,Department of Statistics
来源
Mathematical Programming | 2019年 / 176卷
关键词
94A12; 90C30; 90C90;
D O I
暂无
中图分类号
学科分类号
摘要
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.
引用
收藏
页码:545 / 571
页数:26
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