Robust PCA by Manifold Optimization
Abstract
Robust PCA is a widely used statistical procedure to recover a underlying low-rank matrix with grossly corrupted observations. This work considers the problem of robust PCA as a nonconvex optimization problem on the manifold of low-rank matrices, and proposes two algorithms (for two versions of retractions) based on manifold optimization. It is shown that, with a proper designed initialization, the proposed algorithms are guaranteed to converge to the underlying low-rank matrix linearly. Compared with a previous work based on the Burer-Monterio decomposition of low-rank matrices, the proposed algorithms reduce the dependence on the conditional number of the underlying low-rank matrix theoretically. Simulations and real data examples confirm the competitive performance of our method.
Keywords
Cite
@article{arxiv.1708.00257,
title = {Robust PCA by Manifold Optimization},
author = {Teng Zhang and Yi Yang},
journal= {arXiv preprint arXiv:1708.00257},
year = {2017}
}