articleDec 3, 2007Closed access

Random Features for Large-Scale Kernel Machines

Intel (United States) · California Institute of Technology

Abstract

To accelerate the training of kernel machines, we propose to map the input data to a randomized low-dimensional feature space and then apply existing fast linear methods. The features are designed so that the inner products of the transformed data are approximately equal to those in the feature space of a user specified shift-invariant kernel. We explore two sets of random features, provide convergence bounds on their ability to approximate various radial basis kernels, and show that in large-scale classification and regression tasks linear machine learning al-gorithms applied to these features outperform state-of-the-art large-scale kernel machines. 1

Citation impact

2,664
total citations
FWCI
21.31
Percentile
100%
References
18
Citations per year

Authors

2

Topics & keywords

Keywords
  • Kernel (algebra)
  • Computer science
  • Kernel method
  • Radial basis function kernel
  • Artificial intelligence
  • Kernel embedding of distributions
  • Graph kernel
  • Variable kernel density estimation
No related works found for this paper.