Finding a small spectral approximation for a tall n x d matrix A is a fundamental numerical primitive. For a number of reasons, one often seeks an approximation whose rows are sampled from those of A. Row sampling improves interpretability, saves space when A is sparse, and preserves row structure, which is especially important, for example, when A represents a graph. However, correctly sampling rows from A can be costly when the matrix is large and cannot be stored and processed in memory. Hence, a number of recent publications focus on row sampling in the streaming setting, using little more space than what is required to store the outputted approximation [Kelner Levin 2013] [Kapralov et al. 2014]. Inspired by a growing body of work on ...
International audienceSpectral clustering refers to a family of well-known unsupervised learning alg...
Low-rank matrix approximations, such as the truncated singular value decomposition and the rank-reve...
This paper develops a suite of algorithms for constructing low-rank approximations of an input matri...
Finding a small spectral approximation for a tall n X d matrix A is a fundamental numerical primitiv...
There has been significant interest and progress recently in algorithms that solve regression proble...
Approximating the singular values or eigenvalues of a matrix, i.e. spectrum approximation, is a fund...
In this work, we propose a new randomized algorithm for computing a low-rank approximation to a give...
Randomized matrix algorithms have had significant recent impact on numerical linear algebra. One esp...
Randomized sampling techniques have recently proved capable of efficiently solving many standard pro...
International audienceMost kernel-based methods, such as kernel or Gaussian process regression, kern...
International audienceWe present a matrix factorization algorithm that scales to input matrices that...
International audienceIn this paper, we revisit the problem of constructing a near-optimal rank k ap...
We prove that any real matrix A contains a subset of at most 4k/ɛ+2k log(k+1) rows whose span “conta...
Many of today\u27s applications deal with big quantities of data; from DNA analysis algorithms, to i...
Leverage score sampling provides an appealing way to perform approximate computations for large matr...
International audienceSpectral clustering refers to a family of well-known unsupervised learning alg...
Low-rank matrix approximations, such as the truncated singular value decomposition and the rank-reve...
This paper develops a suite of algorithms for constructing low-rank approximations of an input matri...
Finding a small spectral approximation for a tall n X d matrix A is a fundamental numerical primitiv...
There has been significant interest and progress recently in algorithms that solve regression proble...
Approximating the singular values or eigenvalues of a matrix, i.e. spectrum approximation, is a fund...
In this work, we propose a new randomized algorithm for computing a low-rank approximation to a give...
Randomized matrix algorithms have had significant recent impact on numerical linear algebra. One esp...
Randomized sampling techniques have recently proved capable of efficiently solving many standard pro...
International audienceMost kernel-based methods, such as kernel or Gaussian process regression, kern...
International audienceWe present a matrix factorization algorithm that scales to input matrices that...
International audienceIn this paper, we revisit the problem of constructing a near-optimal rank k ap...
We prove that any real matrix A contains a subset of at most 4k/ɛ+2k log(k+1) rows whose span “conta...
Many of today\u27s applications deal with big quantities of data; from DNA analysis algorithms, to i...
Leverage score sampling provides an appealing way to perform approximate computations for large matr...
International audienceSpectral clustering refers to a family of well-known unsupervised learning alg...
Low-rank matrix approximations, such as the truncated singular value decomposition and the rank-reve...
This paper develops a suite of algorithms for constructing low-rank approximations of an input matri...