4.6 Article

RANDOMIZED SKETCHES FOR KERNELS: FAST AND OPTIMAL NONPARAMETRIC REGRESSION

Journal

ANNALS OF STATISTICS
Volume 45, Issue 3, Pages 991-1023

Publisher

INST MATHEMATICAL STATISTICS-IMS
DOI: 10.1214/16-AOS1472

Keywords

Nonparametric regression; random projection; kernel method; dimensionality reduction; convex optimization

Funding

  1. Office of Naval Research MURI Grant [N00014-11-1-0688]
  2. National Science Foundation Grants [CIF-31712-23800, DMS-11-07000]
  3. Air Force Office of Scientific Research Grant [AFOSR-FA9550-14-1-0016]
  4. Microsoft Research Fellowship

Ask authors/readers for more resources

Kernel ridge regression (KRR) is a standard method for performing non-parametric regression over reproducing kernel Hilbert spaces. Given n samples, the time and space complexity of computing the KRR estimate scale as O(n(3)) and O(n(2)), respectively, and so is prohibitive in many cases. We propose approximations of KRR based on m-dimensional randomized sketches of the kernel matrix, and study how small the projection dimension m can be chosen while still preserving minimax optimality of the approximate KRR estimate. For various classes of randomized sketches, including those based on Gaussian and randomized Hadamard matrices, we prove that it suffices to choose the sketch dimension m proportional to the statistical dimension (modulo logarithmic factors). Thus, we obtain fast and minimax optimal approximations to the KRR estimate for nonparametric regression. In doing so, we prove a novel lower bound on the minimax risk of kernel regression in terms of the localized Rademacher complexity.

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