DocumentCode :
1542203
Title :
Robust PCA as Bilinear Decomposition With Outlier-Sparsity Regularization
Author :
Mateos, Gonzalo ; Giannakis, Georgios B.
Author_Institution :
Dept. of Electr. & Comput. Eng., Univ. of Minnesota, Minneapolis, MN, USA
Volume :
60
Issue :
10
fYear :
2012
Firstpage :
5176
Lastpage :
5190
Abstract :
Principal component analysis (PCA) is widely used for dimensionality reduction, with well-documented merits in various applications involving high-dimensional data, including computer vision, preference measurement, and bioinformatics. In this context, the fresh look advocated here permeates benefits from variable selection and compressive sampling, to robustify PCA against outliers. A least-trimmed squares estimator of a low-rank bilinear factor analysis model is shown closely related to that obtained from an ℓ0-(pseudo)norm-regularized criterion encouraging sparsity in a matrix explicitly modeling the outliers. This connection suggests robust PCA schemes based on convex relaxation, which lead naturally to a family of robust estimators encompassing Huber´s optimal M-class as a special case. Outliers are identified by tuning a regularization parameter, which amounts to controlling sparsity of the outlier matrix along the whole robustification path of (group) least-absolute shrinkage and selection operator (Lasso) solutions. Beyond its ties to robust statistics, the developed outlier-aware PCA framework is versatile to accommodate novel and scalable algorithms to: i) track the low-rank signal subspace robustly, as new data are acquired in real time; and ii) determine principal components robustly in (possibly) infinite-dimensional feature spaces. Synthetic and real data tests corroborate the effectiveness of the proposed robust PCA schemes, when used to identify aberrant responses in personality assessment surveys, as well as unveil communities in social networks, and intruders from video surveillance data.
Keywords :
bioinformatics; principal component analysis; signal sampling; sparse matrices; video surveillance; Huber optimal M-class; Lasso solution; bilinear decomposition; bioinformatics; compressive sampling; computer vision; convex relaxation; high-dimensional data; least-absolute shrinkage and selection operator; least-trimmed squares estimator; low-rank bilinear factor analysis model; outlier matrix; outlier-sparsity regularization; preference measurement; principal component analysis; regularization parameter tuning; robust PCA; sparse matrix; video surveillance data; Data models; Dictionaries; Linear regression; Principal component analysis; Robustness; Signal processing algorithms; Vectors; (Group) Lasso; outlier rejection; principal component analysis; robust statistics; sparsity;
fLanguage :
English
Journal_Title :
Signal Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1053-587X
Type :
jour
DOI :
10.1109/TSP.2012.2204986
Filename :
6218787
Link To Document :
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