DocumentCode :
1648640
Title :
Low-Rank Matrix Completion Based on Maximum Likelihood Estimation
Author :
Jinhui Chen ; Jian Yang
Author_Institution :
Sch. of Comput. Sci. & Technol., Nanjing Univ. of Sci. & Technol. (NJUST), Nanjing, China
fYear :
2013
Firstpage :
261
Lastpage :
265
Abstract :
Low-rank matrix completion has recently emerged in computational data analysis. The problem aims to recover a low-rank representation from the contaminated data. The errors in data are assumed to be sparse, which is generally characterized by minimizing the L1-norm of the residual. This actually assumes that the residual follows the Laplacian distribution. The Laplacian assumption, however, may not be accurate enough to describe various noises in real scenarios. In this paper, we estimate the error in data with robust regression. Assuming the noises are respectively independent and identically distributed, the minimization of noise is equivalent to find the maximum likelihood estimation (MLE) solution for the residuals. We also design an iteratively reweight inexact augmented Lagrange multiplier algorithm to solve the optimization. Experimental results confirm the efficiency of our proposed approach under different conditions.
Keywords :
Laplace equations; computer vision; data analysis; matrix algebra; maximum likelihood estimation; optimisation; Laplacian assumption; Laplacian distribution; MLE solution; computational data analysis; contaminated data; iteratively reweight inexact augmented Lagrange multiplier algorithm; low-rank matrix completion; maximum likelihood estimation; robust regression; Algorithm design and analysis; Databases; Face; Maximum likelihood estimation; Noise; Principal component analysis; Robustness; Matrix completion; error correction; low-rank; robust estimation;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Pattern Recognition (ACPR), 2013 2nd IAPR Asian Conference on
Conference_Location :
Naha
Type :
conf
DOI :
10.1109/ACPR.2013.120
Filename :
6778322
Link To Document :
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