Robust Testing in High-Dimensional Sparse Models

05/16/2022
by   Anand Jerry George, et al.
0

We consider the problem of robustly testing the norm of a high-dimensional sparse signal vector under two different observation models. In the first model, we are given n i.i.d. samples from the distribution 𝒩(θ,I_d) (with unknown θ), of which a small fraction has been arbitrarily corrupted. Under the promise that θ_0≤ s, we want to correctly distinguish whether θ_2=0 or θ_2>γ, for some input parameter γ>0. We show that any algorithm for this task requires n=Ω(sloged/s) samples, which is tight up to logarithmic factors. We also extend our results to other common notions of sparsity, namely, θ_q≤ s for any 0 < q < 2. In the second observation model that we consider, the data is generated according to a sparse linear regression model, where the covariates are i.i.d. Gaussian and the regression coefficient (signal) is known to be s-sparse. Here too we assume that an ϵ-fraction of the data is arbitrarily corrupted. We show that any algorithm that reliably tests the norm of the regression coefficient requires at least n=Ω(min(slog d,1/γ^4)) samples. Our results show that the complexity of testing in these two settings significantly increases under robustness constraints. This is in line with the recent observations made in robust mean testing and robust covariance testing.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/31/2020

The Sample Complexity of Robust Covariance Testing

We study the problem of testing the covariance matrix of a high-dimensio...
research
10/26/2020

Estimation of the l_2-norm and testing in sparse linear regression with unknown variance

We consider the related problems of estimating the l_2-norm and the squa...
research
01/24/2019

High Dimensional Robust Estimation of Sparse Models via Trimmed Hard Thresholding

We study the problem of sparsity constrained M-estimation with arbitrary...
research
01/25/2019

Optimal Sparsity Testing in Linear regression Model

We consider the problem of sparsity testing in the high-dimensional line...
research
09/21/2018

Compressed Sensing with Adversarial Sparse Noise via L1 Regression

We present a simple and effective algorithm for the problem of sparse ro...
research
11/03/2019

Testing noisy linear functions for sparsity

We consider the following basic inference problem: there is an unknown h...
research
10/03/2019

Robust Risk Minimization for Statistical Learning

We consider a general statistical learning problem where an unknown frac...

Please sign up or login with your details

Forgot password? Click here to reset