Conjugate gradient acceleration of iteratively re-weighted least squares methods
Massimo Fornasier, Steffen Peter, Holger Rauhut, Stephan Worm

TL;DR
This paper enhances IRLS algorithms for sparse recovery by integrating conjugate gradient methods, significantly improving speed and accuracy in large-scale problems, and demonstrating superior performance over existing methods.
Contribution
It introduces a conjugate gradient acceleration for IRLS, providing theoretical analysis and numerical evidence of improved convergence and recovery performance in compressed sensing.
Findings
CG-accelerated IRLS speeds up quadratic subproblem solutions.
The method outperforms IHT and FISTA in large-scale sparse recovery.
IRLS recovers sparse signals with fewer measurements than competing algorithms.
Abstract
Iteratively Re-weighted Least Squares (IRLS) is a method for solving minimization problems involving non-quadratic cost functions, perhaps non-convex and non-smooth, which however can be described as the infimum over a family of quadratic functions. This transformation suggests an algorithmic scheme that solves a sequence of quadratic problems to be tackled efficiently by tools of numerical linear algebra. Its general scope and its usually simple implementation, transforming the initial non-convex and non-smooth minimization problem into a more familiar and easily solvable quadratic optimization problem, make it a versatile algorithm. However, despite its simplicity, versatility, and elegant analysis, the complexity of IRLS strongly depends on the way the solution of the successive quadratic optimizations is addressed. For the important special case of and…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Image and Signal Denoising Methods · Ultrasound Imaging and Elastography
