Lifting $\ell_q$-optimization thresholds
Abstract
In this paper we look at a connection between the , optimization and under-determined linear systems of equations with sparse solutions. The case , or in other words optimization and its a connection with linear systems has been thoroughly studied in last several decades; in fact, especially so during the last decade after the seminal works \cite{CRT,DOnoho06CS} appeared. While current understanding of optimization-linear systems connection is fairly known, much less so is the case with a general , optimization. In our recent work \cite{StojnicLqThrBnds10} we provided a study in this direction. As a result we were able to obtain a collection of lower bounds on various , optimization thresholds. In this paper, we provide a substantial conceptual improvement of the methodology presented in \cite{StojnicLqThrBnds10}. Moreover, the practical results in terms of achievable thresholds are also encouraging. As is usually the case with these and similar problems, the methodology we developed emphasizes their a combinatorial nature and attempts to somehow handle it. Although our results' main contributions should be on a conceptual level, they already give a very strong suggestion that optimization can in fact provide a better performance than , a fact long believed to be true due to a tighter optimization relaxation it provides to the original sparsity finding oriented original problem formulation. As such, they in a way give a solid boost to further exploration of the design of the algorithms that would be able to handle , optimization in a reasonable (if not polynomial) time.
Cite
@article{arxiv.1306.3976,
title = {Lifting $\ell_q$-optimization thresholds},
author = {Mihailo Stojnic},
journal= {arXiv preprint arXiv:1306.3976},
year = {2013}
}
Comments
arXiv admin note: substantial text overlap with arXiv:1306.3774, arXiv:1306.3770