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arxiv: 1106.0365 · v2 · pith:VSGRCCY7new · submitted 2011-06-02 · 💻 cs.DS · cs.IT· math.IT

Lower Bounds for Sparse Recovery

classification 💻 cs.DS cs.ITmath.IT
keywords recoveryboundk-sparseproblemalgorithmboundsconsiderconstant
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We consider the following k-sparse recovery problem: design an m x n matrix A, such that for any signal x, given Ax we can efficiently recover x' satisfying ||x-x'||_1 <= C min_{k-sparse} x"} ||x-x"||_1. It is known that there exist matrices A with this property that have only O(k log (n/k)) rows. In this paper we show that this bound is tight. Our bound holds even for the more general /randomized/ version of the problem, where A is a random variable and the recovery algorithm is required to work for any fixed x with constant probability (over A).

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