Sketching Datasets for Large-Scale Learning (long version)

08/04/2020
by   Rémi Gribonval, et al.
46

This article considers "sketched learning," or "compressive learning," an approach to large-scale machine learning where datasets are massively compressed before learning (e.g., clustering, classification, or regression) is performed. In particular, a "sketch" is first constructed by computing carefully chosen nonlinear random features (e.g., random Fourier features) and averaging them over the whole dataset. Parameters are then learned from the sketch, without access to the original dataset. This article surveys the current state-of-the-art in sketched learning, including the main concepts and algorithms, their connections with established signal-processing methods, existing theoretical guarantees—on both information preservation and privacy preservation, and important open problems.

READ FULL TEXT

page 7

page 12

page 14

page 16

page 21

research
12/04/2018

Compressive Classification (Machine Learning without learning)

Compressive learning is a framework where (so far unsupervised) learning...
research
10/21/2021

Mean Nyström Embeddings for Adaptive Compressive Learning

Compressive learning is an approach to efficient large scale learning ba...
research
04/20/2021

Asymmetric compressive learning guarantees with applications to quantized sketches

The compressive learning framework reduces the computational cost of tra...
research
06/09/2016

Sketching for Large-Scale Learning of Mixture Models

Learning parameters from voluminous data can be prohibitive in terms of ...
research
10/27/2016

Compressive K-means

The Lloyd-Max algorithm is a classical approach to perform K-means clust...
research
09/11/2023

Energy Preservation and Stability of Random Filterbanks

What makes waveform-based deep learning so hard? Despite numerous attemp...
research
05/24/2023

Optimal subsampling for large scale Elastic-net regression

Datasets with sheer volume have been generated from fields including com...

Please sign up or login with your details

Forgot password? Click here to reset