Learning robust principal components from L1-norm maximization

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作者
Dingcheng FENG Feng CHEN Wenli XU Tsinghua National Laboratory for Information Science and TechnologyTsinghua UniversityBeijing China Department of AutomationTsinghua UniversityBeijing China [1 ,2 ,1 ,2 ,1 ,2 ,1 ,100084 ,2 ,100084 ]
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TP391.41 [];
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080203 ;
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Principal component analysis(PCA) is fundamental in many pattern recognition applications.Much research has been performed to minimize the reconstruction error in L1-norm based reconstruction error minimization(L1-PCA-REM) since conventional L2-norm based PCA(L2-PCA) is sensitive to outliers.Recently,the variance maximization formulation of PCA with L1-norm(L1-PCA-VM) has been proposed,where new greedy and nongreedy solutions are developed.Armed with the gradient ascent perspective for optimization,we show that the L1-PCA-VM formulation is problematic in learning principal components and that only a greedy solution can achieve robustness motivation,which are verified by experiments on synthetic and real-world datasets.
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页码:901 / 908
页数:8
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