A Predual Proximal Point Algorithm Solving a Non Negative Basis Pursuit Denoising Model
作者:F. Malgouyres, T. Zeng
摘要
This paper develops an implementation of a Predual Proximal Point Algorithm (PPPA) solving a Non Negative Basis Pursuit Denoising model. The model imposes a constraint on the l 2 norm of the residual, instead of penalizing it. The PPPA solves the predual of the problem with a Proximal Point Algorithm (PPA). Moreover, the minimization that needs to be performed at each iteration of PPA is solved with a dual method. We can prove that these dual variables converge to a solution of the initial problem.
论文关键词:Basis Pursuit, Algorithm, Sparse representation, Proximal point algorithm, ell1 minimization
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论文官网地址:https://doi.org/10.1007/s11263-009-0227-z