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Homotopy based algorithms for 0\ell_0-regularized least-squares

Abstract

Sparse signal restoration is usually formulated as the minimization of a quadratic cost function yAx22\|y-Ax\|_2^2, where A is a dictionary and x is an unknown sparse vector. It is well-known that imposing an 0\ell_0 constraint leads to an NP-hard minimization problem. The convex relaxation approach has received considerable attention, where the 0\ell_0-norm is replaced by the 1\ell_1-norm. Among the many efficient 1\ell_1 solvers, the homotopy algorithm minimizes yAx22+λx1\|y-Ax\|_2^2+\lambda\|x\|_1 with respect to x for a continuum of λ\lambda's. It is inspired by the piecewise regularity of the 1\ell_1-regularization path, also referred to as the homotopy path. In this paper, we address the minimization problem yAx22+λx0\|y-Ax\|_2^2+\lambda\|x\|_0 for a continuum of λ\lambda's and propose two heuristic search algorithms for 0\ell_0-homotopy. Continuation Single Best Replacement is a forward-backward greedy strategy extending the Single Best Replacement algorithm, previously proposed for 0\ell_0-minimization at a given λ\lambda. The adaptive search of the λ\lambda-values is inspired by 1\ell_1-homotopy. 0\ell_0 Regularization Path Descent is a more complex algorithm exploiting the structural properties of the 0\ell_0-regularization path, which is piecewise constant with respect to λ\lambda. Both algorithms are empirically evaluated for difficult inverse problems involving ill-conditioned dictionaries. Finally, we show that they can be easily coupled with usual methods of model order selection.

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