Fast Algorithm for Constrained Linear Inverse Problems

12/02/2022
by   Mohammed Rayyan Sheriff, et al.
0

We consider the constrained Linear Inverse Problem (LIP), where a certain atomic norm (like the ℓ_1 and the Nuclear norm) is minimized subject to a quadratic constraint. Typically, such cost functions are non-differentiable which makes them not amenable to the fast optimization methods existing in practice. We propose two equivalent reformulations of the constrained LIP with improved convex regularity: (i) a smooth convex minimization problem, and (ii) a strongly convex min-max problem. These problems could be solved by applying existing acceleration based convex optimization methods which provide better O ( 1/k^2) theoretical convergence guarantee. However, to fully exploit the utility of these reformulations, we also provide a novel algorithm, to which we refer as the Fast Linear Inverse Problem Solver (FLIPS), that is tailored to solve the reformulation of the LIP. We demonstrate the performance of FLIPS on the sparse coding problem arising in image processing tasks. In this setting, we observe that FLIPS consistently outperforms the Chambolle-Pock and C-SALSA algorithms–two of the current best methods in the literature.

READ FULL TEXT

page 13

page 14

page 29

research
07/05/2020

Novel min-max reformulations of Linear Inverse Problems

In this article, we dwell into the class of so-called ill-posed Linear I...
research
02/25/2012

Clustering using Max-norm Constrained Optimization

We suggest using the max-norm as a convex surrogate constraint for clust...
research
08/11/2016

A Richer Theory of Convex Constrained Optimization with Reduced Projections and Improved Rates

This paper focuses on convex constrained optimization problems, where th...
research
04/05/2017

Geometry of Factored Nuclear Norm Regularization

This work investigates the geometry of a nonconvex reformulation of mini...
research
02/26/2019

Algorithms and software for projections onto intersections of convex and non-convex sets with applications to inverse problems

We propose algorithms and software for computing projections onto the in...
research
04/11/2017

Solving the L1 regularized least square problem via a box-constrained smooth minimization

In this paper, an equivalent smooth minimization for the L1 regularized ...
research
10/25/2016

Frank-Wolfe Algorithms for Saddle Point Problems

We extend the Frank-Wolfe (FW) optimization algorithm to solve constrain...

Please sign up or login with your details

Forgot password? Click here to reset