Optimal variable selection and adaptive noisy Compressed Sensing

09/10/2018
by   Mohamed Ndaoud, et al.
0

For high-dimensional linear regression model, we propose an algorithm of exact support recovery in the setting of noisy compressed sensing where all entries of the design matrix are i.i.d standard Gaussian. This algorithm achieves the same conditions of exact recovery as the exhaustive search (maximal likelihood) decoder, and has an advantage over the latter of being adaptive to all parameters of the problem and computable in polynomial time. The core of our analysis consists in the study of the non-asymptotic minimax Hamming risk of variable selection. This allows us to derive a procedure, which is nearly optimal in a non-asymptotic minimax sense. Then, we develop its adaptive version, and propose a robust variant of the method to handle datasets with outliers and heavy-tailed distributions of observations. The resulting polynomial time procedure is near optimal, adaptive to all parameters of the problem and also robust.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/30/2021

Variable selection, monotone likelihood ratio and group sparsity

In the pivotal variable selection problem, we derive the exact non-asymp...
research
06/16/2020

Robust compressed sensing of generative models

The goal of compressed sensing is to estimate a high dimensional vector ...
research
06/26/2013

Near-Optimal Adaptive Compressed Sensing

This paper proposes a simple adaptive sensing and group testing algorith...
research
12/30/2022

Quantizing Heavy-tailed Data in Statistical Estimation: (Near) Minimax Rates, Covariate Quantization, and Uniform Recovery

This paper studies the quantization of heavy-tailed data in some fundame...
research
06/11/2013

Precisely Verifying the Null Space Conditions in Compressed Sensing: A Sandwiching Algorithm

In this paper, we propose new efficient algorithms to verify the null sp...
research
05/29/2018

Statistical mechanical analysis of sparse linear regression as a variable selection problem

An algorithmic limit of compressed sensing or related variable-selection...
research
03/01/2019

Metropolized Knockoff Sampling

Model-X knockoffs is a wrapper that transforms essentially any feature i...

Please sign up or login with your details

Forgot password? Click here to reset