AbstractGiven an m×n matrix A and a positive integer k, we describe a randomized procedure for the approximation of A with a matrix Z of rank k. The procedure relies on applying AT to a collection of l random vectors, where l is an integer equal to or slightly greater than k; the scheme is efficient whenever A and AT can be applied rapidly to arbitrary vectors. The discrepancy between A and Z is of the same order as lm times the (k+1)st greatest singular value σk+1 of A, with negligible probability of even moderately large deviations. The actual estimates derived in the paper are fairly complicated, but are simpler when l−k is a fixed small nonnegative integer. For example, according to one of our estimates for l−k=20, the probability that ...
Research support by: Goal: Given an m × n matrix A, we seek to compute a rank-k approximation, with ...
We propose new effective randomized algorithms for some fundamental matrix computations such as prec...
This work explores how randomization can be exploited to deliver sophisticated algorithms with prova...
AbstractWe introduce a randomized procedure that, given an m×n matrix A and a positive integer k, ap...
AbstractGiven an m×n matrix A and a positive integer k, we describe a randomized procedure for the a...
AbstractWe introduce a randomized procedure that, given an m×n matrix A and a positive integer k, ap...
Abstract. In many applications, the data consist of (or may be naturally formulated as) an m × n mat...
Abstract. A classical problem in matrix computations is the efficient and reliable approximation of ...
Matrices of huge size and low rank are encountered in applications from the real world where large s...
Low-rank matrix approximations, such as the truncated singular value decomposition and the rank-reve...
... matrix A. It is often of interest to find a low-rank approximation to A, i.e., an approximation ...
Low-rank matrix approximations, such as the truncated singular value decomposition and the rank-reve...
Abstract. In many applications, the data consist of (or may be naturally formulated as) an m × n mat...
Low-rank matrix approximations, such as the truncated singular value decomposition and the rank-rev...
1 A randomized algorithm for low rank matrix aproximation We are interested in finding an approximat...
Research support by: Goal: Given an m × n matrix A, we seek to compute a rank-k approximation, with ...
We propose new effective randomized algorithms for some fundamental matrix computations such as prec...
This work explores how randomization can be exploited to deliver sophisticated algorithms with prova...
AbstractWe introduce a randomized procedure that, given an m×n matrix A and a positive integer k, ap...
AbstractGiven an m×n matrix A and a positive integer k, we describe a randomized procedure for the a...
AbstractWe introduce a randomized procedure that, given an m×n matrix A and a positive integer k, ap...
Abstract. In many applications, the data consist of (or may be naturally formulated as) an m × n mat...
Abstract. A classical problem in matrix computations is the efficient and reliable approximation of ...
Matrices of huge size and low rank are encountered in applications from the real world where large s...
Low-rank matrix approximations, such as the truncated singular value decomposition and the rank-reve...
... matrix A. It is often of interest to find a low-rank approximation to A, i.e., an approximation ...
Low-rank matrix approximations, such as the truncated singular value decomposition and the rank-reve...
Abstract. In many applications, the data consist of (or may be naturally formulated as) an m × n mat...
Low-rank matrix approximations, such as the truncated singular value decomposition and the rank-rev...
1 A randomized algorithm for low rank matrix aproximation We are interested in finding an approximat...
Research support by: Goal: Given an m × n matrix A, we seek to compute a rank-k approximation, with ...
We propose new effective randomized algorithms for some fundamental matrix computations such as prec...
This work explores how randomization can be exploited to deliver sophisticated algorithms with prova...