English

Random feature-based double Vovk-Azoury-Warmuth algorithm for online multi-kernel learning

Machine Learning 2025-04-03 v2

Abstract

We introduce a novel multi-kernel learning algorithm, VAW2^2, for online least squares regression in reproducing kernel Hilbert spaces (RKHS). VAW2^2 leverages random Fourier feature-based functional approximation and the Vovk-Azoury-Warmuth (VAW) method in a two-level procedure: VAW is used to construct expert strategies from random features generated for each kernel at the first level, and then again to combine their predictions at the second level. A theoretical analysis yields a regret bound of O(T1/2lnT)O(T^{1/2}\ln T) in expectation with respect to artificial randomness, when the number of random features scales as T1/2T^{1/2}. Empirical results on some benchmark datasets demonstrate that VAW2^2 achieves superior performance compared to the existing online multi-kernel learning algorithms: Raker and OMKL-GF, and to other theoretically grounded method methods involving convex combination of expert predictions at the second level.

Keywords

Cite

@article{arxiv.2503.20087,
  title  = {Random feature-based double Vovk-Azoury-Warmuth algorithm for online multi-kernel learning},
  author = {Dmitry B. Rokhlin and Olga V. Gurtovaya},
  journal= {arXiv preprint arXiv:2503.20087},
  year   = {2025}
}
R2 v1 2026-06-28T22:34:28.960Z