Sparse and Smooth Signal Estimation: Convexification of L0 Formulations

November 06, 2018 ยท Declared Dead ยท ๐Ÿ› Journal of machine learning research

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Authors Alper Atamturk, Andres Gomez, Shaoning Han arXiv ID 1811.02655 Category stat.ML: Machine Learning (Stat) Cross-listed cs.LG, eess.SP Citations 47 Venue Journal of machine learning research Last Checked 3 months ago
Abstract
Signal estimation problems with smoothness and sparsity priors can be naturally modeled as quadratic optimization with $\ell_0$-"norm" constraints. Since such problems are non-convex and hard-to-solve, the standard approach is, instead, to tackle their convex surrogates based on $\ell_1$-norm relaxations. In this paper, we propose a new iterative (convex) conic quadratic relaxations that exploit not only the $\ell_0$-"norm" terms, but also the fitness and smoothness functions. The iterative convexification approach substantially closes the gap between the $\ell_0$-"norm" and its $\ell_1$ surrogate. These stronger relaxations lead to significantly better estimators than $\ell_1$-norm approaches and also allow one to utilize affine sparsity priors. In addition, the parameters of the model and the resulting estimators are easily interpretable. Experiments with a tailored Lagrangian decomposition method indicate that the proposed iterative convex relaxations \rev{yield solutions within 1\% of the exact $\ell_0$ approach, and can tackle instances with up to 100,000 variables under one minute.
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