Matrix sketching is a recently developed data compression technique. An input matrix A is efficiently approximated with a smaller matrix B, so that B preserves most of the properties of A up to some guaranteed approximation ratio. In so doing numerical operations on big data sets become faster. Sketching algorithms generally use random projections to compress the original dataset and this stochastic generation process makes them amenable to statistical analysis. The statistical properties of sketched regression algorithms have been widely studied previously. We study the performances of sketching algorithms in the supervised classification context, both in terms of misclassification rate and of boundary approximation, as the degree of s...
Unlike estimating the norm of a vector in a stream, the memory required for estimating the norm of a...
Sketching has emerged as a powerful technique for speeding up problems in numerical linear algebra, ...
Linear sketches are powerful algorithmic tools that turn an n-dimensional input into a concise lower...
The presence of imbalanced classes is more and more common in practical applications and it is known...
It is an extended version of https://hal.inria.fr/hal-03350599 (official version published with DOI:...
We consider statistical aspects of solving large-scale least-squares (LS) problems using randomized ...
We study matrix sketching methods for regularized variants of linear regression, low rank approximat...
This paper describes a suite of algorithms for constructing low-rank approximations of an input matr...
It is often desirable to reduce the dimensionality of a large dataset by projecting it onto a low-di...
We initiate the study of data dimensionality reduction, or sketching, for the q -> p norms. Given an...
Linear classifiers are well-known to be vulnerable to adversarial attacks: they may predict incorrec...
This study presents methods called TSGPR- and SAC-SketchyCoreSVD to improve the protocol of subsampl...
A methodology for using random sketching in the context of model order reduction for high-dimensiona...
This paper develops a suite of algorithms for constructing low-rank approximations of an input matri...
A common approach for compressing large-scale data is through matrix sketching. In this work, we con...
Unlike estimating the norm of a vector in a stream, the memory required for estimating the norm of a...
Sketching has emerged as a powerful technique for speeding up problems in numerical linear algebra, ...
Linear sketches are powerful algorithmic tools that turn an n-dimensional input into a concise lower...
The presence of imbalanced classes is more and more common in practical applications and it is known...
It is an extended version of https://hal.inria.fr/hal-03350599 (official version published with DOI:...
We consider statistical aspects of solving large-scale least-squares (LS) problems using randomized ...
We study matrix sketching methods for regularized variants of linear regression, low rank approximat...
This paper describes a suite of algorithms for constructing low-rank approximations of an input matr...
It is often desirable to reduce the dimensionality of a large dataset by projecting it onto a low-di...
We initiate the study of data dimensionality reduction, or sketching, for the q -> p norms. Given an...
Linear classifiers are well-known to be vulnerable to adversarial attacks: they may predict incorrec...
This study presents methods called TSGPR- and SAC-SketchyCoreSVD to improve the protocol of subsampl...
A methodology for using random sketching in the context of model order reduction for high-dimensiona...
This paper develops a suite of algorithms for constructing low-rank approximations of an input matri...
A common approach for compressing large-scale data is through matrix sketching. In this work, we con...
Unlike estimating the norm of a vector in a stream, the memory required for estimating the norm of a...
Sketching has emerged as a powerful technique for speeding up problems in numerical linear algebra, ...
Linear sketches are powerful algorithmic tools that turn an n-dimensional input into a concise lower...