The CUR matrix decomposition and the Nyström approximation are two important low-rank matrix approximation techniques. The Nyström method approximates a symmetric positive semidefinite matrix in terms of a small number of its columns, while CUR approx-imates an arbitrary data matrix by a small number of its columns and rows. Thus, CUR decomposition can be regarded as an extension of the Nyström approximation. In this paper we establish a more general error bound for the adaptive column/row sampling algorithm, based on which we propose more accurate CUR and Nyström algo-rithms with expected relative-error bounds. The proposed CUR and Nyström algorithms also have low time complexity and can avoid maintaining the whole data matrix in RAM....
A CUR approximation of a matrix A is a particular type of low-rank approximation where C and R consi...
Low-rank approximations which are computed from selected rows and columns of a given data matrix hav...
We derive a CUR matrix factorization based on the Discrete Empirical Interpolation Method (DEIM). Fo...
CUR matrix decomposition is a randomized algorithm that can efficiently compute the low rank approxi...
Low-rank matrix approximation is an effective tool in alleviating the memory and computational burde...
CUR matrix decomposition computes the low rank approximation of a given matrix by using the actual r...
We consider the related tasks of matrix completion and matrix approximation from missing data and pr...
Positive semidefinite matrices arise in a variety of fields, including statistics, signal processing...
<p>We consider the related tasks of matrix completion and matrix approximation from missing data and...
Many kernel methods suffer from high time and space complexities and are thus prohibitive in big-dat...
We derive a CUR matrix factorization based on the Discrete Empirical Interpolation Method (DEIM). Fo...
The Nyström method is an efficient technique for large-scale kernel learning. It provides a low-rank...
A CUR approximation of a matrix A is a particular type of low-rank approximation A approximate to CU...
“study [low-rank] matrix approximations that are explicitly expressed in terms of a small numbers of...
The Nyström method is an efficient technique for the eigenvalue decomposition of large kernel matric...
A CUR approximation of a matrix A is a particular type of low-rank approximation where C and R consi...
Low-rank approximations which are computed from selected rows and columns of a given data matrix hav...
We derive a CUR matrix factorization based on the Discrete Empirical Interpolation Method (DEIM). Fo...
CUR matrix decomposition is a randomized algorithm that can efficiently compute the low rank approxi...
Low-rank matrix approximation is an effective tool in alleviating the memory and computational burde...
CUR matrix decomposition computes the low rank approximation of a given matrix by using the actual r...
We consider the related tasks of matrix completion and matrix approximation from missing data and pr...
Positive semidefinite matrices arise in a variety of fields, including statistics, signal processing...
<p>We consider the related tasks of matrix completion and matrix approximation from missing data and...
Many kernel methods suffer from high time and space complexities and are thus prohibitive in big-dat...
We derive a CUR matrix factorization based on the Discrete Empirical Interpolation Method (DEIM). Fo...
The Nyström method is an efficient technique for large-scale kernel learning. It provides a low-rank...
A CUR approximation of a matrix A is a particular type of low-rank approximation A approximate to CU...
“study [low-rank] matrix approximations that are explicitly expressed in terms of a small numbers of...
The Nyström method is an efficient technique for the eigenvalue decomposition of large kernel matric...
A CUR approximation of a matrix A is a particular type of low-rank approximation where C and R consi...
Low-rank approximations which are computed from selected rows and columns of a given data matrix hav...
We derive a CUR matrix factorization based on the Discrete Empirical Interpolation Method (DEIM). Fo...