28
0

Convergence analysis of online algorithms for vector-valued kernel regression

Main:2 Pages
Appendix:18 Pages
Abstract

We consider the problem of approximating the regression function from noisy vector-valued data by an online learning algorithm using an appropriate reproducing kernel Hilbert space (RKHS) as prior. In an online algorithm, i.i.d. samples become available one by one by a random process and are successively processed to build approximations to the regression function. We are interested in the asymptotic performance of such online approximation algorithms and show that the expected squared error in the RKHS norm can be bounded by C2(m+1)s/(2+s)C^2 (m+1)^{-s/(2+s)}, where mm is the current number of processed data, the parameter 0<s10<s\leq 1 expresses an additional smoothness assumption on the regression function and the constant CC depends on the variance of the input noise, the smoothness of the regression function and further parameters of the algorithm.

View on arXiv
@article{griebel2025_2309.07779,
  title={ Convergence analysis of online algorithms for vector-valued kernel regression },
  author={ Michael Griebel and Peter Oswald },
  journal={arXiv preprint arXiv:2309.07779},
  year={ 2025 }
}
Comments on this paper