Agnostic Estimation for Misspecified Phase Retrieval Models
Abstract
The goal of noisy high-dimensional phase retrieval is to estimate an $s$-sparse parameter $\boldsymbol{\beta}^*\in \mathbb{R}^d$ from $n$ realizations of the model $Y = (\boldsymbol{X}^{\top} \boldsymbol{\beta}^*)^2 + \varepsilon$. Based on this model, we propose a significant semi-parametric generalization called misspecified phase retrieval (MPR), in which $Y = f(\boldsymbol{X}^{\top}\boldsymbol{\beta}^*, \varepsilon)$ with unknown $f$ and $\operatorname{Cov}(Y, (\boldsymbol{X}^{\top}\boldsymbol{\beta}^*)^2) > 0$. For example, MPR encompasses $Y = h(|\boldsymbol{X}^{\top} \boldsymbol{\beta}^*|) + \varepsilon$ with increasing $h$ as a special case. Despite the generality of the MPR model, it eludes the reach of most existing semi-parametric estimators. In this paper, we propose an estimation procedure, which consists of solving a cascade of two convex programs and provably recovers the direction of $\boldsymbol{\beta}^*$. Our theory is backed up by thorough numerical results.
Cite
Text
Neykov et al. "Agnostic Estimation for Misspecified Phase Retrieval Models." Neural Information Processing Systems, 2016.Markdown
[Neykov et al. "Agnostic Estimation for Misspecified Phase Retrieval Models." Neural Information Processing Systems, 2016.](https://mlanthology.org/neurips/2016/neykov2016neurips-agnostic/)BibTeX
@inproceedings{neykov2016neurips-agnostic,
title = {{Agnostic Estimation for Misspecified Phase Retrieval Models}},
author = {Neykov, Matey and Wang, Zhaoran and Liu, Han},
booktitle = {Neural Information Processing Systems},
year = {2016},
pages = {4089-4097},
url = {https://mlanthology.org/neurips/2016/neykov2016neurips-agnostic/}
}