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.
翻译:在本文中,我们提出一种新的贪婪算法,用于稀疏近似,称为 SLS 用于单 L_1 选择 。 SLS 基本上是由贪婪的前方战略构成的。 在这种战略中,每个迭代中新组成部分的选择规则基于解决最小平方优化问题,并受到剩余变量L_1规范的制约。然后,选择了最大振幅的元件。在涉及高度关联的字典的棘手的稀疏脱变异问题上,模拟了方法的效率,在解决方案稀少时,该方法优于流行的贪婪算法和普世追求代诺瓦主义。