The purpose of this text is to provide an accessible introduction to a set of recently developed algorithms for factorizing matrices. These new algorithms attain high practical speed by reducing the dimensionality of intermediate computations using randomized projections. The algorithms are particularly powerful for computing low-rank approximations to very large matrices, but they can also be used to accelerate algorithms for computing full factorizations of matrices. A key competitive advantage of the algorithms described is that they require less communication than traditional deterministic methods
A randomized algorithm for computing a so-called UTV factorization efficiently is presented. Given a...
A randomized algorithm for computing a so-called UTV factorization efficiently is presented. Given a...
Research support by: Goal: Given an m × n matrix A, we seek to compute a rank-k approximation, with ...
The purpose of this text is to provide an accessible introduction to a set of recently developed alg...
Matrices of huge size and low rank are encountered in applications from the real world where large s...
The development of randomized algorithms for numerical linear algebra, e.g. for computing approximat...
We propose new effective randomized algorithms for some fundamental matrix computations such as prec...
This survey describes probabilistic algorithms for linear algebraic computations, such as factorizin...
It is well and long known that random matrices tend to be well conditioned, and we em-ploy them to a...
Randomized sampling techniques have recently proved capable of efficiently solving many standard pro...
Low-rank matrix approximations, such as the truncated singular value decomposition and the rank-rev...
This survey describes probabilistic algorithms for linear algebraic computations, such as factorizin...
This work explores how randomization can be exploited to deliver sophisticated algorithms with prova...
This work explores how randomization can be exploited to deliver sophisticated algorithms with prova...
It is well known that random matrices tend to be well conditioned, and we employ this property to ad...
A randomized algorithm for computing a so-called UTV factorization efficiently is presented. Given a...
A randomized algorithm for computing a so-called UTV factorization efficiently is presented. Given a...
Research support by: Goal: Given an m × n matrix A, we seek to compute a rank-k approximation, with ...
The purpose of this text is to provide an accessible introduction to a set of recently developed alg...
Matrices of huge size and low rank are encountered in applications from the real world where large s...
The development of randomized algorithms for numerical linear algebra, e.g. for computing approximat...
We propose new effective randomized algorithms for some fundamental matrix computations such as prec...
This survey describes probabilistic algorithms for linear algebraic computations, such as factorizin...
It is well and long known that random matrices tend to be well conditioned, and we em-ploy them to a...
Randomized sampling techniques have recently proved capable of efficiently solving many standard pro...
Low-rank matrix approximations, such as the truncated singular value decomposition and the rank-rev...
This survey describes probabilistic algorithms for linear algebraic computations, such as factorizin...
This work explores how randomization can be exploited to deliver sophisticated algorithms with prova...
This work explores how randomization can be exploited to deliver sophisticated algorithms with prova...
It is well known that random matrices tend to be well conditioned, and we employ this property to ad...
A randomized algorithm for computing a so-called UTV factorization efficiently is presented. Given a...
A randomized algorithm for computing a so-called UTV factorization efficiently is presented. Given a...
Research support by: Goal: Given an m × n matrix A, we seek to compute a rank-k approximation, with ...