Breaking through the Thresholds: an Analysis for Iterative Reweighted ℓ_1 Minimization via the Grassmann Angle Framework
Abstract
It is now well understood that the ℓ_1 minimization algorithm is able to recover sparse signals from incomplete measurements [2], [1], [3] and sharp recoverable sparsity thresholds have also been obtained for the ℓ_1 minimization algorithm. However, even though iterative reweighted ℓ_1 minimization algorithms or related algorithms have been empirically observed to boost the recoverable sparsity thresholds for certain types of signals, no rigorous theoretical results have been established to prove this fact. In this paper, we try to provide a theoretical foundation for analyzing the iterative reweighted ℓ1 algorithms. In particular, we show that for a nontrivial class of signals, the iterative reweighted ℓ_1 minimization can indeed deliver recoverable sparsity thresholds larger than that given in [1], [3]. Our results are based on a high-dimensional geometrical analysis (Grassmann angle analysis) of the null-space characterization for ℓ_1 minimization and weighted ℓ1 minimization algorithms.
Additional Information
© 2010 IEEE.Attached Files
Published - 05495210.pdf
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Additional details
- Eprint ID
- 54235
- Resolver ID
- CaltechAUTHORS:20150130-073717820
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2015-01-30Created from EPrint's datestamp field
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2021-11-10Created from EPrint's last_modified field