Average-case Hardness of RIP Certification

05/31/2016
by   Tengyao Wang, et al.
0

The restricted isometry property (RIP) for design matrices gives guarantees for optimal recovery in sparse linear models. It is of high interest in compressed sensing and statistical learning. This property is particularly important for computationally efficient recovery methods. As a consequence, even though it is in general NP-hard to check that RIP holds, there have been substantial efforts to find tractable proxies for it. These would allow the construction of RIP matrices and the polynomial-time verification of RIP given an arbitrary matrix. We consider the framework of average-case certifiers, that never wrongly declare that a matrix is RIP, while being often correct for random instances. While there are such functions which are tractable in a suboptimal parameter regime, we show that this is a computationally hard task in any better regime. Our results are based on a new, weaker assumption on the problem of detecting dense subgraphs.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/22/2020

The Average-Case Time Complexity of Certifying the Restricted Isometry Property

In compressed sensing, the restricted isometry property (RIP) on M × N s...
research
07/12/2022

Deriving RIP sensing matrices for sparsifying dictionaries

Compressive sensing involves the inversion of a mapping SD ∈ℝ^m × n, whe...
research
03/08/2022

Semi-Random Sparse Recovery in Nearly-Linear Time

Sparse recovery is one of the most fundamental and well-studied inverse ...
research
04/11/2019

Restricted Isometry Property under High Correlations

Matrices satisfying the Restricted Isometry Property (RIP) play an impor...
research
03/26/2018

Sparse Recovery over Graph Incidence Matrices: Polynomial Time Guarantees and Location Dependent Performance

Classical results in sparse recovery guarantee the exact reconstruction ...
research
11/18/2019

RIP constants for deterministic compressed sensing matrices-beyond Gershgorin

Compressed sensing (CS) is a signal acquisition paradigm to simultaneous...
research
02/06/2023

Learning Trees of ℓ_0-Minimization Problems

The problem of computing minimally sparse solutions of under-determined ...

Please sign up or login with your details

Forgot password? Click here to reset