CUR from a Sparse Optimization Viewpoint
Abstract
The CUR decomposition provides an approximation of a matrix that has low reconstruction error and that is sparse in the sense that the resulting approximation lies in the span of only a few columns of . In this regard, it appears to be similar to many sparse PCA methods. However, CUR takes a randomized algorithmic approach, whereas most sparse PCA methods are framed as convex optimization problems. In this paper, we try to understand CUR from a sparse optimization viewpoint. We show that CUR is implicitly optimizing a sparse regression objective and, furthermore, cannot be directly cast as a sparse PCA method. We also observe that the sparsity attained by CUR possesses an interesting structure, which leads us to formulate a sparse PCA method that achieves a CUR-like sparsity.
Cite
@article{arxiv.1011.0413,
title = {CUR from a Sparse Optimization Viewpoint},
author = {Jacob Bien and Ya Xu and Michael W. Mahoney},
journal= {arXiv preprint arXiv:1011.0413},
year = {2010}
}
Comments
9 pages; in NIPS 2010