AbstractWe introduce a randomized procedure that, given an m×n matrix A and a positive integer k, approximates A with a matrix Z of rank k. The algorithm relies on applying a structured l×m random matrix R to each column of A, where l is an integer near to, but greater than, k. The structure of R allows us to apply it to an arbitrary m×1 vector at a cost proportional to mlog(l); the resulting procedure can construct a rank-k approximation Z from the entries of A at a cost proportional to mnlog(k)+l2(m+n). We prove several bounds on the accuracy of the algorithm; one such bound guarantees that the spectral norm ‖A−Z‖ of the discrepancy between A and Z is of the same order as max{m,n} times the (k+1)st greatest singular value σk+1 of A, with ...
Randomized algorithms for low-rank matrix approximation are investigated, with the emphasis on the f...
Research support by: Goal: Given an m × n matrix A, we seek to compute a rank-k approximation, with ...
International audienceIn this paper, we revisit the problem of constructing a near-optimal rank 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...
AbstractGiven an m×n matrix A and a positive integer k, we describe a randomized procedure for the a...
Low-rank matrix approximations, such as the truncated singular value decomposition and the rank-reve...
Low-rank matrix approximations, such as the truncated singular value decomposition and the rank-reve...
Low-rank matrix approximations, such as the truncated singular value decomposition and the rank-rev...
Abstract. In many applications, the data consist of (or may be naturally formulated as) an m × n mat...
Randomized sampling techniques have recently proved capable of efficiently solving many standard pro...
... matrix A. It is often of interest to find a low-rank approximation to A, i.e., an approximation ...
Abstract. A classical problem in matrix computations is the efficient and reliable approximation of ...
1 A randomized algorithm for low rank matrix aproximation We are interested in finding an approximat...
Randomized algorithms for low-rank matrix approximation are investigated, with the emphasis on the f...
Randomized algorithms for low-rank matrix approximation are investigated, with the emphasis on the f...
Research support by: Goal: Given an m × n matrix A, we seek to compute a rank-k approximation, with ...
International audienceIn this paper, we revisit the problem of constructing a near-optimal rank 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...
AbstractGiven an m×n matrix A and a positive integer k, we describe a randomized procedure for the a...
Low-rank matrix approximations, such as the truncated singular value decomposition and the rank-reve...
Low-rank matrix approximations, such as the truncated singular value decomposition and the rank-reve...
Low-rank matrix approximations, such as the truncated singular value decomposition and the rank-rev...
Abstract. In many applications, the data consist of (or may be naturally formulated as) an m × n mat...
Randomized sampling techniques have recently proved capable of efficiently solving many standard pro...
... matrix A. It is often of interest to find a low-rank approximation to A, i.e., an approximation ...
Abstract. A classical problem in matrix computations is the efficient and reliable approximation of ...
1 A randomized algorithm for low rank matrix aproximation We are interested in finding an approximat...
Randomized algorithms for low-rank matrix approximation are investigated, with the emphasis on the f...
Randomized algorithms for low-rank matrix approximation are investigated, with the emphasis on the f...
Research support by: Goal: Given an m × n matrix A, we seek to compute a rank-k approximation, with ...
International audienceIn this paper, we revisit the problem of constructing a near-optimal rank k ap...