Sparse approximation and recovery by greedy algorithms

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Abstract

We study sparse approximation by greedy algorithms. Our contribution is twofold. First, we prove exact recovery with high probability of random K-sparse signals within (K(1+ε) iterations of the orthogonal matching pursuit (OMP). This result shows that in a probabilistic sense, the OMP is almost optimal for exact recovery. Second, we prove the Lebesgue-type inequalities for the weak Chebyshev greedy algorithm, a generalization of the weak orthogonal matching pursuit to the case of a Banach space. The main novelty of these results is a Banach space setting instead of a Hilbert space setting. However, even in the case of a Hilbert space, our results add some new elements to known results on the Lebesgue-type inequalities for the restricted isometry property dictionaries. Our technique is a development of the recent technique created by Zhang. © 2014 IEEE.

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Livshitz, E. D., & Temlyakov, V. N. (2014). Sparse approximation and recovery by greedy algorithms. IEEE Transactions on Information Theory, 60(7), 3989–4000. https://doi.org/10.1109/TIT.2014.2320932

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