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A Fast and Accurate Matrix Completion Method Based on QR Decomposition and $L_{2,1}$ -Norm Minimization

机译:基于QR分解和 $ L_ {2,1} $ -的快速而精确的矩阵完成方法规范最小化

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摘要

Low-rank matrix completion aims to recover matrices with missing entries and has attracted considerable attention from machine learning researchers. Most of the existing methods, such as weighted nuclear-norm-minimization-based methods and Qatar Riyal (QR)-decomposition-based methods, cannot provide both convergence accuracy and convergence speed. To investigate a fast and accurate completion method, an iterative QR-decomposition-based method is proposed for computing an approximate singular value decomposition. This method can compute the largest r(r > 0) singular values of a matrix by iterative QR decomposition. Then, under the framework of matrix trifactorization, a method for computing an approximate SVD based on QR decomposition (CSVD-QR)- based L-2,L-1-norm minimization method (LNM-QR) is proposed for fast matrix completion. Theoretical analysis shows that this QR-decomposition-based method can obtain the same optimal solution as a nuclear norm minimization method, i. e., the L-2,L-1-norm of a submatrix can converge to its nuclear norm. Consequently, an LNM-QR-based iteratively reweighted L-2,L-1-norm minimization method (IRLNM-QR) is proposed to improve the accuracy of LNM-QR. Theoretical analysis shows that IRLNM-QR is as accurate as an iteratively reweighted nuclear norm minimization method, which is much more accurate than the traditional QR-decomposition-based matrix completion methods. Experimental results obtained on both synthetic and real-world visual data sets show that our methods are much faster and more accurate than the state-of-the-art methods.
机译:低秩矩阵完成的目的是恢复丢失条目的矩阵,并已引起机器学习研究人员的极大关注。现有的大多数方法,例如基于加权核规范最小化的方法和基于卡塔尔里亚尔(QR)分解的方法,都无法同时提供收敛精度和收敛速度。为了研究一种快速,准确的完成方法,提出了一种基于迭代QR分解的近似奇异值分解方法。该方法可以通过迭代QR分解来计算矩阵的最大r(r> 0)奇异值。然后,在矩阵三因子化的框架下,提出了一种基于QR分解的近似SVD的计算方法(CSVD-QR)-基于L-2,L-1-范数最小化方法(LNM-QR)的快速矩阵完成。理论分析表明,这种基于QR分解的方法可以获得与核规范最小化方法相同的最优解。例如,子矩阵的L-2,L-1-范数可以收敛到其核范数。因此,提出了一种基于LNM-QR的迭代加权的L-2,L-1-范数最小化方法(IRLNM-QR),以提高LNM-QR的准确性。理论分析表明,IRRNM-QR与迭代加权核规范最小化方法一样准确,该方法比传统的基于QR分解的矩阵完成方法要精确得多。在合成的和真实的视觉数据集上获得的实验结果表明,我们的方法比最先进的方法更快,更准确。

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