AbstractIn many engineering applications it is required to compute the dominant subspace of a matrix A of dimension m×n, with m⪢n. Often the matrix A is produced incrementally, so all the columns are not available simultaneously. This problem arises, e.g., in image processing, where each column of the matrix A represents an image of a given sequence leading to a singular value decomposition-based compression [S. Chandrasekaran, B.S. Manjunath, Y.F. Wang, J. Winkeler, H. Zhang, An eigenspace update algorithm for image analysis, Graphical Models and Image Process. 59 (5) (1997) 321–332]. Furthermore, the so-called proper orthogonal decomposition approximation uses the left dominant subspace of a matrix A where a column consists of a time inst...
AbstractThe Partial Singular Value Decomposition (PSVD) subroutine computes a basis of the left and/...
AbstractIn this paper, we continue the study of a class of structured matrices which may be treated ...
International audienceWe present block algorithms and their implementation for the parallelization o...
In many engineering applications it is required to compute the dominant subspace of a matrix A of di...
In many engineering applications it is required to compute the dominant subspace of a matrix A of di...
In this paper we show how to compute recursively an approximation of the left and right dominant sin...
In this paper we show how to compute recursively an approximation of the left and right dominant sin...
In [Chahlaoui, Gallivan and Van Dooren, 2004] a recursive procedure is designed for computing an app...
AbstractComputing the singular values and vectors of a matrix is a crucial kernel in numerous scient...
Computing the singular values and vectors of a matrix is a crucial kernel in numerous scientific and...
In many data-intensive applications, the use of principal component analysis (PCA) and other related...
AbstractWe consider here the problem of tracking the dominant eigenspace of an indefinite matrix by ...
AbstractIn this paper, an improved algorithm PSVD for computing the singular subspace of a matrix co...
AbstractA method of derivation of parallel algorithms for (N + 1) × (N + 1) matrices with recursive ...
This dissertation is concerned with the task of efficiently and accurately tracking the singular val...
AbstractThe Partial Singular Value Decomposition (PSVD) subroutine computes a basis of the left and/...
AbstractIn this paper, we continue the study of a class of structured matrices which may be treated ...
International audienceWe present block algorithms and their implementation for the parallelization o...
In many engineering applications it is required to compute the dominant subspace of a matrix A of di...
In many engineering applications it is required to compute the dominant subspace of a matrix A of di...
In this paper we show how to compute recursively an approximation of the left and right dominant sin...
In this paper we show how to compute recursively an approximation of the left and right dominant sin...
In [Chahlaoui, Gallivan and Van Dooren, 2004] a recursive procedure is designed for computing an app...
AbstractComputing the singular values and vectors of a matrix is a crucial kernel in numerous scient...
Computing the singular values and vectors of a matrix is a crucial kernel in numerous scientific and...
In many data-intensive applications, the use of principal component analysis (PCA) and other related...
AbstractWe consider here the problem of tracking the dominant eigenspace of an indefinite matrix by ...
AbstractIn this paper, an improved algorithm PSVD for computing the singular subspace of a matrix co...
AbstractA method of derivation of parallel algorithms for (N + 1) × (N + 1) matrices with recursive ...
This dissertation is concerned with the task of efficiently and accurately tracking the singular val...
AbstractThe Partial Singular Value Decomposition (PSVD) subroutine computes a basis of the left and/...
AbstractIn this paper, we continue the study of a class of structured matrices which may be treated ...
International audienceWe present block algorithms and their implementation for the parallelization o...