An Approximate Augmented Lagrangian Method for Nonnegative Low-Rank Matrix Approximation

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作者
Hong Zhu
Michael K. Ng
Guang-Jing Song
机构
[1] Jiangsu University,School of Mathematical Sciences
[2] The University of Hong Kong,Department of Mathematics
[3] Weifang University,School of Mathematics and Information Sciences
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关键词
Nonnegative low-rank matrix approximation; Augmented Lagrangian method; Nonnegative matrix factorization; Low-rank matrix;
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摘要
Nonnegative low-rank (NLR) matrix approximation, which is different from the classical nonnegative matrix factorization, has been recently proposed for several data analysis applications. The approximation is computed by alternately projecting onto the fixed-rank matrix manifold and the nonnegative matrix manifold. To ensure the convergence of the alternating projection method, the given nonnegative matrix must be close to a non-tangential point in the intersection of the nonegative and the low-rank manifolds. The main aim of this paper is to develop an approximate augmented Lagrangian method for solving nonnegative low-rank matrix approximation. We show that the sequence generated by the approximate augmented Lagrangian method converges to a critical point of the NLR matrix approximation problem. Numerical results to demonstrate the performance of the approximate augmented Lagrangian method on approximation accuracy, convergence speed, and computational time are reported.
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