Parallelizing Spectral Algorithms for Kernel Learning
Abstract
We consider a distributed learning approach in supervised learning for a large class of spectral regularization methods in an RKHS framework. The data set of size n is partitioned into disjoint subsets. On each subset, some spectral regularization method (belonging to a large class, including in particular Kernel Ridge Regression, -boosting and spectral cut-off) is applied. The regression function is then estimated via simple averaging, leading to a substantial reduction in computation time. We show that minimax optimal rates of convergence are preserved if m grows sufficiently slowly (corresponding to an upper bound for ) as , depending on the smoothness assumptions on and the intrinsic dimensionality. In spirit, our approach is classical.
Cite
@article{arxiv.1610.07487,
title = {Parallelizing Spectral Algorithms for Kernel Learning},
author = {Gilles Blanchard and Nicole Mücke},
journal= {arXiv preprint arXiv:1610.07487},
year = {2017}
}