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arxiv: 0907.3666 · v1 · submitted 2009-07-21 · 💻 cs.IT · math.IT

Various thresholds for ell₁-optimization in compressed sensing

classification 💻 cs.IT math.IT
keywords optimizationcitedonohopolsystemunknownvectorcompressedequations
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Recently, \cite{CRT,DonohoPol} theoretically analyzed the success of a polynomial $\ell_1$-optimization algorithm in solving an under-determined system of linear equations. In a large dimensional and statistical context \cite{CRT,DonohoPol} proved that if the number of equations (measurements in the compressed sensing terminology) in the system is proportional to the length of the unknown vector then there is a sparsity (number of non-zero elements of the unknown vector) also proportional to the length of the unknown vector such that $\ell_1$-optimization succeeds in solving the system. In this paper, we provide an alternative performance analysis of $\ell_1$-optimization and obtain the proportionality constants that in certain cases match or improve on the best currently known ones from \cite{DonohoPol,DT}.

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