Sparse Recovery by Non-convex Optimization -- Instance Optimality
Abstract
In this note, we address the theoretical properties of , a class of compressed sensing decoders that rely on minimization with 0<p<1 to recover estimates of sparse and compressible signals from incomplete and inaccurate measurements. In particular, we extend the results of Candes, Romberg and Tao, and Wojtaszczyk regarding the decoder , based on minimization, to with 0<p<1. Our results are two-fold. First, we show that under certain sufficient conditions that are weaker than the analogous sufficient conditions for the decoders are robust to noise and stable in the sense that they are (2,p) instance optimal for a large class of encoders. Second, we extend the results of Wojtaszczyk to show that, like , the decoders are (2,2) instance optimal in probability provided the measurement matrix is drawn from an appropriate distribution.
Cite
@article{arxiv.0809.0745,
title = {Sparse Recovery by Non-convex Optimization -- Instance Optimality},
author = {Rayan Saab and Ozgur Yilmaz},
journal= {arXiv preprint arXiv:0809.0745},
year = {2009}
}
Comments
32 pages, 4 figures v2