稳健主成分分析
矩阵范数
秩(图论)
低秩近似
数学优化
规范(哲学)
估计员
拉格朗日乘数
矩阵完成
奇异值
数学
应用数学
缩小
基质(化学分析)
主成分分析
计算机科学
算法
人工智能
特征向量
组合数学
统计
纯数学
法学
物理
高斯分布
张量(固有定义)
量子力学
政治学
作者
Zhao Kang,Chong Peng,Qiang Cheng
出处
期刊:arXiv: Computer Vision and Pattern Recognition
日期:2015-11-01
被引量:99
摘要
Numerous applications in data mining and machine learning require recovering a matrix of minimal rank. Robust principal component analysis (RPCA) is a general framework for handling this kind of problems. Nuclear norm based convex surrogate of the rank function in RPCA is widely investigated. Under certain assumptions, it can recover the underlying true low rank matrix with high probability. However, those assumptions may not hold in real-world applications. Since the nuclear norm approximates the rank by adding all singular values together, which is essentially a l 1 -norm of the singular values, the resulting approximation erroris not trivial and thus the resulting matrix estimator can be significantly biased. To seek a closer approximation and to alleviate the above-mentioned limitations of the nuclear norm, we propose a nonconvex rank approximation. This approximation to the matrix rank is tighter than the nuclear norm. To solve the associated nonconvex minimization problem, we develop an efficient augmented Lagrange multiplier based optimization algorithm. Experimental results demonstrate that our method outperforms current state-of-the-art algorithms in both accuracy and efficiency.
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