Robust PCA in High-dimension: A Deterministic Approach
Machine Learning
2012-06-22 v1 Machine Learning
Abstract
We consider principal component analysis for contaminated data-set in the high dimensional regime, where the dimensionality of each observation is comparable or even more than the number of observations. We propose a deterministic high-dimensional robust PCA algorithm which inherits all theoretical properties of its randomized counterpart, i.e., it is tractable, robust to contaminated points, easily kernelizable, asymptotic consistent and achieves maximal robustness -- a breakdown point of 50%. More importantly, the proposed method exhibits significantly better computational efficiency, which makes it suitable for large-scale real applications.
Cite
@article{arxiv.1206.4628,
title = {Robust PCA in High-dimension: A Deterministic Approach},
author = {Jiashi Feng and Huan Xu and Shuicheng Yan},
journal= {arXiv preprint arXiv:1206.4628},
year = {2012}
}
Comments
ICML2012