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An efficient matrix bi-factorization alternative optimization method for low-rank matrix recovery and completion

机译:用于低秩矩阵恢复和完成的高效矩阵双分解替代优化方法

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摘要

In recent years, matrix rank minimization problems have aroused considerable interests from machine learning, data mining and computer vision communities. All of these problems can be solved via their convex relaxations which minimize the trace norm instead of the rank of the matrix, and have to be solved iteratively and involve singular value decomposition (SVD) at each iteration. Therefore, those algorithms for trace norm minimization problems suffer from high computation cost of multiple SVDs. In this paper, we propose an efficient Matrix Bi-Factorization (MBF) method to approximate the original trace norm minimization problem and mitigate the computation cost of performing SVDs. The proposed MBF method can be used to address a wide range of low-rank matrix recovery and completion problems such as low-rank and sparse matrix decomposition (LRSD), low-rank representation (LRR) and low-rank matrix completion (MC). We also present three small scale matrix trace norm models for LRSD, LRR and MC problems, respectively. Moreover, we develop two concrete linearized proximal alternative optimization algorithms for solving the above three problems. Experimental results on a variety of synthetic and real-world data sets validate the efficiency, robustness and effectiveness of our MBF method comparing with the state-of-the-art trace norm minimization algorithms.
机译:近年来,矩阵排序最小化问题引起了机器学习,数据挖掘和计算机视觉界的极大兴趣。所有这些问题都可以通过其凸松弛来解决,这些凸松弛将迹线范数(而不是矩阵的秩)最小化,并且必须迭代解决,并且每次迭代都涉及奇异值分解(SVD)。因此,那些用于跟踪范数最小化问题的算法会遭受多个SVD的高计算成本的困扰。在本文中,我们提出了一种有效的矩阵双向因子(MBF)方法来近似原始的迹线最小化问题并减轻执行SVD的计算成本。提出的MBF方法可用于解决各种低阶矩阵恢复和完成问题,例如低阶和稀疏矩阵分解(LRSD),低阶表示(LRR)和低阶矩阵完成(MC) 。我们还针对LRSD,LRR和MC问题分别提出了三种小规模矩阵跟踪范数模型。此外,我们开发了两种具体的线性化近端替代优化算法来解决上述三个问题。与最新的迹线规范最小化算法相比,在各种综合和真实数据集上的实验结果验证了我们的MBF方法的效率,鲁棒性和有效性。

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