矩阵完成
缩小
基质(化学分析)
低秩近似
矩阵范数
算法
数学
计算机科学
规范(哲学)
数学优化
组合数学
人工智能
纯数学
材料科学
物理
张量(固有定义)
特征向量
复合材料
高斯分布
量子力学
法学
政治学
作者
Qing Liu,Qing Jiang,Jing Zhang,Bin Jiang,Zhengyu Liu
标识
DOI:10.1142/s0218001423500076
摘要
Low-rank matrix completion, which aims to recover a matrix with many missing values, has attracted much attention in many fields of computer science. A low-rank matrix fitting (LMaFit) method has been proposed for fast matrix completion recently. However, this method cannot converge accurately on matrices of real-world images. For improving the accuracy of LMaFit method, an improved low-rank matrix fitting (ILMF) method based on the weighted [Formula: see text] norm minimization is proposed in this paper, where the [Formula: see text] norm is the summation of the [Formula: see text]-power [Formula: see text] of [Formula: see text] norms of rows in a matrix. In the proposed method, i.e. the ILMF method, the incomplete matrix that may be corrupted by noises is decomposed into the summation of a low-rank matrix and a noise matrix at first. Then, a weighted [Formula: see text] norm minimization problem is solved by using an alternating direction method for improving the accuracy of matrix completion. Experimental results on real-world images show that the ILMF method has much better performances in terms of both the convergence accuracy and convergence speed than the compared methods.
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