Sparse Sampling Kaczmarz-Motzkin Method with Linear Convergence
Mathematical Methods In The Applied Sciences(2021)SCI 4区
Acad Mil Sci Peoples Liberat Army
Abstract
The randomized sparse Kaczmarz method was recently proposed to recover sparse solutions of linear systems. In this work, we introduce a greedy variant of the randomized sparse Kaczmarz method by employing the sampling Kaczmarz-Motzkin method and prove its linear convergence in expectation with respect to the Bregman distance in the noiseless and noisy cases. This greedy variant can be viewed as a unification of the sampling Kaczmarz-Motzkin method and the randomized sparse Kaczmarz method, and hence inherits the merits of these two methods. Numerically, we report a couple of experimental results to demonstrate its superiority.
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Key words
Bregman projection,sampling Kaczmarz-Motzkin,sparse
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