Stability of Multi-Task Kernel Regression Algorithms
Abstract
We study the stability properties of nonlinear multi-task regression in reproducing Hilbert spaces with operator-valued kernels. Such kernels, a.k.a. multi-task kernels, are appropriate for learning prob- lems with nonscalar outputs like multi-task learning and structured out- put prediction. We show that multi-task kernel regression algorithms are uniformly stable in the general case of infinite-dimensional output spaces. We then derive under mild assumption on the kernel generaliza- tion bounds of such algorithms, and we show their consistency even with non Hilbert-Schmidt operator-valued kernels . We demonstrate how to apply the results to various multi-task kernel regression methods such as vector-valued SVR and functional ridge regression.
Keywords
Cite
@article{arxiv.1306.3905,
title = {Stability of Multi-Task Kernel Regression Algorithms},
author = {Julien Audiffren and Hachem Kadri},
journal= {arXiv preprint arXiv:1306.3905},
year = {2013}
}