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AAAI 2023

Improved Kernel Alignment Regret Bound for Online Kernel Learning

Conference Paper AAAI Technical Track on Machine Learning II Artificial Intelligence

Abstract

In this paper, we improve the kernel alignment regret bound for online kernel learning in the regime of the Hinge loss function. Previous algorithm achieves a regret of O((A_TT ln T)^{1/4}) at a computational complexity (space and per-round time) of O((A_TT ln T)^{1/2}), where A_T is called kernel alignment. We propose an algorithm whose regret bound and computational complexity are better than previous results. Our results depend on the decay rate of eigenvalues of the kernel matrix. If the eigenvalues of the kernel matrix decay exponentially, then our algorithm enjoys a regret of O((A_T)^{1/2}) at a computational complexity of O((ln T)^2). Otherwise, our algorithm enjoys a regret of O((A_TT)^{1/4}) at a computational complexity of O((A_TT)^{1/2}). We extend our algorithm to batch learning and obtain a O(T^{-1}(E[A_T])^{1/2}) excess risk bound which improves the previous O(T^{-1/2}) bound.

Authors

Keywords

  • ML: Kernel Methods
  • ML: Online Learning & Bandits

Context

Venue
AAAI Conference on Artificial Intelligence
Archive span
1980-2026
Indexed papers
28718
Paper id
693641127200621143