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arxiv: 1107.4623 · v5 · submitted 2011-07-22 · 🧮 math.NA · cs.IT· math.IT· math.OC· stat.ML

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A Unifying Analysis of Projected Gradient Descent for ell_p-constrained Least Squares

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classification 🧮 math.NA cs.ITmath.ITmath.OCstat.ML
keywords algorithmaccuracyconstraineddescentgradientguaranteeiterativeleast
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In this paper we study the performance of the Projected Gradient Descent(PGD) algorithm for $\ell_{p}$-constrained least squares problems that arise in the framework of Compressed Sensing. Relying on the Restricted Isometry Property, we provide convergence guarantees for this algorithm for the entire range of $0\leq p\leq1$, that include and generalize the existing results for the Iterative Hard Thresholding algorithm and provide a new accuracy guarantee for the Iterative Soft Thresholding algorithm as special cases. Our results suggest that in this group of algorithms, as $p$ increases from zero to one, conditions required to guarantee accuracy become stricter and robustness to noise deteriorates.

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