English

Sparse Recovery by Non-convex Optimization -- Instance Optimality

Information Theory 2009-08-10 v2 math.IT

Abstract

In this note, we address the theoretical properties of Δp\Delta_p, a class of compressed sensing decoders that rely on p\ell^p 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 Δ1\Delta_1, based on 1\ell^1 minimization, to Δp\Delta_p 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 Δ1\Delta_1 the decoders Δp\Delta_p 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 Δ1\Delta_1, the decoders Δp\Delta_p are (2,2) instance optimal in probability provided the measurement matrix is drawn from an appropriate distribution.

Keywords

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

R2 v1 2026-06-21T11:16:46.107Z