稳健主成分分析
稳健性(进化)
估计员
秩(图论)
算法
计算机科学
稳健统计
基质(化学分析)
数学
数学优化
主成分分析
模式识别(心理学)
人工智能
统计
组合数学
复合材料
基因
化学
材料科学
生物化学
作者
Ran He,Tieniu Tan,Liang Wang
标识
DOI:10.1109/tpami.2013.188
摘要
Low-rank matrix recovery algorithms aim to recover a corrupted low-rank matrix with sparse errors. However, corrupted errors may not be sparse in real-world problems and the relationship between ℓ 1 regularizer on noise and robust M-estimators is still unknown. This paper proposes a general robust framework for low-rank matrix recovery via implicit regularizers of robust M-estimators, which are derived from convex conjugacy and can be used to model arbitrarily corrupted errors. Based on the additive form of half-quadratic optimization, proximity operators of implicit regularizers are developed such that both low-rank structure and corrupted errors can be alternately recovered. In particular, the dual relationship between the absolute function in ℓ 1 regularizer and Huber M-estimator is studied, which establishes a connection between robust low-rank matrix recovery methods and M-estimators based robust principal component analysis methods. Extensive experiments on synthetic and real-world data sets corroborate our claims and verify the robustness of the proposed framework.
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