Sparse recovery under matrix uncertainty

Abstract

We consider the model eqnarray*y=Xθ*+, Z=X+,eqnarray* where the random vector y∈Rn and the random n× p matrix Z are observed, the n× p matrix X is unknown, is an n× p random noise matrix, ∈Rn is a noise independent of , and θ* is a vector of unknown parameters to be estimated. The matrix uncertainty is in the fact that X is observed with additive error. For dimensions p that can be much larger than the sample size n, we consider the estimation of sparse vectors θ*. Under matrix uncertainty, the Lasso and Dantzig selector turn out to be extremely unstable in recovering the sparsity pattern (i.e., of the set of nonzero components of θ*), even if the noise level is very small. We suggest new estimators called matrix uncertainty selectors (or, shortly, the MU-selectors) which are close to θ* in different norms and in the prediction risk if the restricted eigenvalue assumption on X is satisfied. We also show that under somewhat stronger assumptions, these estimators recover correctly the sparsity pattern.

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