A problem for many kernel-based methods is that the amount of computation required to find the solution scales as O(n ), where n is the number of training examples. We develop and analyze an algorithm to compute an easily-interpretable low-rank approximation to an n Gram matrix G such that computations of interest may be performed more rapidly. The approximation is of the form C is a matrix consisting of a small number c of columns of G and Wk between those c columns of G and the corresponding c rows of G. An important aspect of the algorithm is the probability distribution used to randomly sample the columns; we will use a judiciously-chosen and data-dependent nonuniform probability distribution. Let F denote the...
In this thesis, we investigate how well we can reconstruct the best rank-? approximation of a large ...
We propose randomized techniques for speeding up Kernel Principal Component Analysis on three levels...
One approach to improving the running time of kernel-based machine learning methods is to build a sm...
A problem for many kernel-based methods is that the amount of computation required to find the solut...
The scalability of kernel machines is a big chal-lenge when facing millions of samples due to storag...
We consider ℓ1-Rank-r Approximation over GF(2), where for a binary m × n matrix A and a positive int...
We consider ₁-Rank-r Approximation over {GF}(2), where for a binary m× n matrix and a positive inte...
In this paper, we revisit the problem of constructing a near-optimal rank k approximation of a matri...
International audienceWe consider supervised learning problems within the positive-definite kernel f...
... matrix A. It is often of interest to find a low-rank approximation to A, i.e., an approximation ...
AbstractWe introduce a randomized procedure that, given an m×n matrix A and a positive integer k, ap...
Many interesting machine learning problems are best posed by considering instances that are distribu...
In this work, we propose a new randomized algorithm for computing a low-rank approximation to a give...
Abstract. In many applications, the data consist of (or may be naturally formulated as) an m × n mat...
Kernels are popular in a variety of fields such as approximation, interpolation, meshless methods, n...
In this thesis, we investigate how well we can reconstruct the best rank-? approximation of a large ...
We propose randomized techniques for speeding up Kernel Principal Component Analysis on three levels...
One approach to improving the running time of kernel-based machine learning methods is to build a sm...
A problem for many kernel-based methods is that the amount of computation required to find the solut...
The scalability of kernel machines is a big chal-lenge when facing millions of samples due to storag...
We consider ℓ1-Rank-r Approximation over GF(2), where for a binary m × n matrix A and a positive int...
We consider ₁-Rank-r Approximation over {GF}(2), where for a binary m× n matrix and a positive inte...
In this paper, we revisit the problem of constructing a near-optimal rank k approximation of a matri...
International audienceWe consider supervised learning problems within the positive-definite kernel f...
... matrix A. It is often of interest to find a low-rank approximation to A, i.e., an approximation ...
AbstractWe introduce a randomized procedure that, given an m×n matrix A and a positive integer k, ap...
Many interesting machine learning problems are best posed by considering instances that are distribu...
In this work, we propose a new randomized algorithm for computing a low-rank approximation to a give...
Abstract. In many applications, the data consist of (or may be naturally formulated as) an m × n mat...
Kernels are popular in a variety of fields such as approximation, interpolation, meshless methods, n...
In this thesis, we investigate how well we can reconstruct the best rank-? approximation of a large ...
We propose randomized techniques for speeding up Kernel Principal Component Analysis on three levels...
One approach to improving the running time of kernel-based machine learning methods is to build a sm...