A semi-smoothing augmented Lagrange multiplier algorithm for low-rank Toeplitz matrix completion

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作者
Ruiping Wen
Shuzhen Li
Yonghong Duan
机构
[1] Taiyuan Normal University,Key Laboratory of Engineering & Computing Science, Shanxi Provincial Department of Education/Department of Mathematics
[2] Taiyuan Normal University,Department of Mathematics
[3] Taiyuan University,Department of Mathematics
关键词
Toeplitz matrix; Completion; Augmented Lagrange multiplier; Data communication;
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摘要
The smoothing augmented Lagrange multiplier (SALM) algorithm is a generalization of the augmented Lagrange multiplier algorithm for completing a Toeplitz matrix, which saves computational cost of the singular value decomposition (SVD) and approximates well the solution. However, the communication of numerous data is computationally demanding at each iteration step. In this paper, we propose an accelerated scheme to the SALM algorithm for the Toeplitz matrix completion (TMC), which will reduce the extra load coming from data communication under reasonable smoothing. It has resulted in a semi-smoothing augmented Lagrange multiplier (SSALM) algorithm. Meanwhile, we demonstrate the convergence theory of the new algorithm. Finally, numerical experiments show that the new algorithm is more effective/economic than the original algorithm.
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