Plug-in Estimation in High-Dimensional Linear Inverse Problems: A Rigorous Analysis
Abstract
Estimating a vector $\mathbf{x}$ from noisy linear measurements $\mathbf{Ax+w}$ often requires use of prior knowledge or structural constraints on $\mathbf{x}$ for accurate reconstruction. Several recent works have considered combining linear least-squares estimation with a generic or plug-in ``denoiser" function that can be designed in a modular manner based on the prior knowledge about $\mathbf{x}$. While these methods have shown excellent performance, it has been difficult to obtain rigorous performance guarantees. This work considers plug-in denoising combined with the recently-developed Vector Approximate Message Passing (VAMP) algorithm, which is itself derived via Expectation Propagation techniques. It shown that the mean squared error of this ``plug-in" VAMP can be exactly predicted for a large class of high-dimensional random $\Abf$ and denoisers. The method is illustrated in image reconstruction and parametric bilinear estimation.
Cite
Text
Fletcher et al. "Plug-in Estimation in High-Dimensional Linear Inverse Problems: A Rigorous Analysis." Neural Information Processing Systems, 2018.Markdown
[Fletcher et al. "Plug-in Estimation in High-Dimensional Linear Inverse Problems: A Rigorous Analysis." Neural Information Processing Systems, 2018.](https://mlanthology.org/neurips/2018/fletcher2018neurips-plugin/)BibTeX
@inproceedings{fletcher2018neurips-plugin,
title = {{Plug-in Estimation in High-Dimensional Linear Inverse Problems: A Rigorous Analysis}},
author = {Fletcher, Alyson K. and Pandit, Parthe and Rangan, Sundeep and Sarkar, Subrata and Schniter, Philip},
booktitle = {Neural Information Processing Systems},
year = {2018},
pages = {7440-7449},
url = {https://mlanthology.org/neurips/2018/fletcher2018neurips-plugin/}
}