Novel Min-Max Reformulations of Linear Inverse Problems

Abstract

In this article, we dwell into the class of so-called ill-posed Linear Inverse Problems (LIP) which simply refer to the task of recovering the entire signal from its relatively few random linear measurements. Such problems arise in a variety of settings with applications ranging from medical image processing, recommender systems, etc. We propose a slightly generalized version of the error constrained linear inverse problem and obtain a novel and equivalent convex-concave min-max reformulation by providing an exposition to its convex geometry. Saddle points of the min-max problem are completely characterized in terms of a solution to the LIP, and vice versa. Applying simple saddle point seeking ascend-descent type algorithms to solve the min-max problems provides novel and simple algorithms to find a solution to the LIP. Moreover, the reformulation of an LIP as the min-max problem provided in this article is crucial in developing methods to solve the dictionary learning problem with almost sure recovery constraints.

Cite

Text

Sheriff and Chatterjee. "Novel Min-Max Reformulations of Linear Inverse Problems." Journal of Machine Learning Research, 2022.

Markdown

[Sheriff and Chatterjee. "Novel Min-Max Reformulations of Linear Inverse Problems." Journal of Machine Learning Research, 2022.](https://mlanthology.org/jmlr/2022/sheriff2022jmlr-novel/)

BibTeX

@article{sheriff2022jmlr-novel,
  title     = {{Novel Min-Max Reformulations of Linear Inverse Problems}},
  author    = {Sheriff, Mohammed Rayyan and Chatterjee, Debasish},
  journal   = {Journal of Machine Learning Research},
  year      = {2022},
  pages     = {1-46},
  volume    = {23},
  url       = {https://mlanthology.org/jmlr/2022/sheriff2022jmlr-novel/}
}