Literature survey on low rank approximation of matrices

N Kishore Kumar, J Schneider - Linear and Multilinear Algebra, 2017 - Taylor & Francis
Low rank approximation of matrices has been well studied in literature. Singular value
decomposition, QR decomposition with column pivoting, rank revealing QR factorization …

Sketching as a tool for numerical linear algebra

DP Woodruff - … and Trends® in Theoretical Computer Science, 2014 - nowpublishers.com
This survey highlights the recent advances in algorithms for numerical linear algebra that
have come from the technique of linear sketching, whereby given a matrix, one first …

Dimensionality reduction for k-means clustering and low rank approximation

MB Cohen, S Elder, C Musco, C Musco… - Proceedings of the forty …, 2015 - dl.acm.org
We show how to approximate a data matrix A with a much smaller sketch~ A that can be
used to solve a general class of constrained k-rank approximation problems to within (1+ ε) …

Cross tensor approximation methods for compression and dimensionality reduction

S Ahmadi-Asl, CF Caiafa, A Cichocki, AH Phan… - IEEE …, 2021 - ieeexplore.ieee.org
Cross Tensor Approximation (CTA) is a generalization of Cross/skeleton matrix and CUR
Matrix Approximation (CMA) and is a suitable tool for fast low-rank tensor approximation. It …

Near-optimal column-based matrix reconstruction

C Boutsidis, P Drineas, M Magdon-Ismail - SIAM Journal on Computing, 2014 - SIAM
We consider low-rank reconstruction of a matrix using a subset of its columns and present
asymptotically optimal algorithms for both spectral norm and Frobenius norm reconstruction …

Optimal CUR matrix decompositions

C Boutsidis, DP Woodruff - Proceedings of the forty-sixth annual ACM …, 2014 - dl.acm.org
The CUR decomposition of an m× n matrix A finds an m× c matrix C with a small subset of c<
n columns of A, together with an r× n matrix R with a small subset of r< m rows of A, as well …

[PDF][PDF] Improving CUR matrix decomposition and the Nyström approximation via adaptive sampling

S Wang, Z Zhang - The Journal of Machine Learning Research, 2013 - jmlr.org
The CUR matrix decomposition and the Nyström approximation are two important low-rank
matrix approximation techniques. The Nyström method approximates a symmetric positive …

Randomized numerical linear algebra: A perspective on the field with an eye to software

R Murray, J Demmel, MW Mahoney… - arxiv preprint arxiv …, 2023 - arxiv.org
Randomized numerical linear algebra-RandNLA, for short-concerns the use of
randomization as a resource to develop improved algorithms for large-scale linear algebra …

Determinantal point processes in randomized numerical linear algebra

M Derezinski, MW Mahoney - Notices of the American Mathematical …, 2021 - ams.org
Randomized Numerical Linear Algebra (RandNLA) is an area which uses randomness,
most notably random sampling and random projection methods, to develop improved …

Low-rank matrix and tensor completion via adaptive sampling

A Krishnamurthy, A Singh - Advances in neural information …, 2013 - proceedings.neurips.cc
We study low rank matrix and tensor completion and propose novel algorithms that employ
adaptive sampling schemes to obtain strong performance guarantees for these problems …