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 …
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 …
have come from the technique of linear sketching, whereby given a matrix, one first …
Dimensionality reduction for k-means clustering and low rank approximation
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) …
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
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 …
Matrix Approximation (CMA) and is a suitable tool for fast low-rank tensor approximation. It …
Near-optimal column-based matrix reconstruction
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 …
asymptotically optimal algorithms for both spectral norm and Frobenius norm reconstruction …
Optimal CUR matrix decompositions
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 …
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
The CUR matrix decomposition and the Nyström approximation are two important low-rank
matrix approximation techniques. The Nyström method approximates a symmetric positive …
matrix approximation techniques. The Nyström method approximates a symmetric positive …
Randomized numerical linear algebra: A perspective on the field with an eye to software
Randomized numerical linear algebra-RandNLA, for short-concerns the use of
randomization as a resource to develop improved algorithms for large-scale linear algebra …
randomization as a resource to develop improved algorithms for large-scale linear algebra …
Determinantal point processes in randomized numerical linear algebra
Randomized Numerical Linear Algebra (RandNLA) is an area which uses randomness,
most notably random sampling and random projection methods, to develop improved …
most notably random sampling and random projection methods, to develop improved …
Low-rank matrix and tensor completion via adaptive sampling
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 …
adaptive sampling schemes to obtain strong performance guarantees for these problems …