SLS (Single ℓ_1 Selection): a new greedy algorithm with an ℓ_1-norm selection rule

02/11/2021
by   Ramzi Ben Mhenni, et al.
0

In this paper, we propose a new greedy algorithm for sparse approximation, called SLS for Single L_1 Selection. SLS essentially consists of a greedy forward strategy, where the selection rule of a new component at each iteration is based on solving a least-squares optimization problem, penalized by the L_1 norm of the remaining variables. Then, the component with maximum amplitude is selected. Simulation results on difficult sparse deconvolution problems involving a highly correlated dictionary reveal the efficiency of the method, which outperforms popular greedy algorithms and Basis Pursuit Denoising when the solution is sparse.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset