A Primal Dual Active Set with Continuation Algorithm for the ℓ^0-Regularized Optimization Problem

03/03/2014
by   Yuling Jiao, et al.
0

We develop a primal dual active set with continuation algorithm for solving the ℓ^0-regularized least-squares problem that frequently arises in compressed sensing. The algorithm couples the the primal dual active set method with a continuation strategy on the regularization parameter. At each inner iteration, it first identifies the active set from both primal and dual variables, and then updates the primal variable by solving a (typically small) least-squares problem defined on the active set, from which the dual variable can be updated explicitly. Under certain conditions on the sensing matrix, i.e., mutual incoherence property or restricted isometry property, and the noise level, the finite step global convergence of the algorithm is established. Extensive numerical examples are presented to illustrate the efficiency and accuracy of the algorithm and the convergence analysis.

READ FULL TEXT
research
10/04/2013

A Primal Dual Active Set Algorithm for a Class of Nonconvex Sparsity Optimization

In this paper, we consider the problem of recovering a sparse vector fro...
research
11/03/2017

Robust Decoding from 1-Bit Compressive Sampling with Least Squares

In 1-bit compressive sensing (1-bit CS) where target signal is coded int...
research
01/27/2020

On Newton Screening

Screening and working set techniques are important approaches to reducin...
research
06/06/2023

A modified combined active-set Newton method for solving phase-field fracture into the monolithic limit

In this work, we examine a numerical phase-field fracture framework in w...
research
06/30/2011

Dual Modelling of Permutation and Injection Problems

When writing a constraint program, we have to choose which variables sho...
research
06/25/2021

𝒩IPM-HLSP: An Efficient Interior-Point Method for Hierarchical Least-Squares Programs

Hierarchical least-squares programs with linear constraints (HLSP) are a...
research
07/25/2019

Safe Feature Elimination for Non-Negativity Constrained Convex Optimization

Inspired by recent work on safe feature elimination for 1-norm regulariz...

Please sign up or login with your details

Forgot password? Click here to reset