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High-dimensional subset recovery in noise: Sparsified measurements without loss of statistical efficiency

Abstract

We consider the problem of estimating the support of a vector βRp\beta^* \in \mathbb{R}^{p} based on observations contaminated by noise. A significant body of work has studied behavior of 1\ell_1-relaxations when applied to measurement matrices drawn from standard dense ensembles (e.g., Gaussian, Bernoulli). In this paper, we analyze \emph{sparsified} measurement ensembles, and consider the trade-off between measurement sparsity, as measured by the fraction γ\gamma of non-zero entries, and the statistical efficiency, as measured by the minimal number of observations nn required for exact support recovery with probability converging to one. Our main result is to prove that it is possible to let γ0\gamma \to 0 at some rate, yielding measurement matrices with a vanishing fraction of non-zeros per row while retaining the same statistical efficiency as dense ensembles. A variety of simulation results confirm the sharpness of our theoretical predictions.

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