English

Regularization Strategies and Empirical Bayesian Learning for MKL

Machine Learning 2011-03-03 v2 Machine Learning

Abstract

Multiple kernel learning (MKL), structured sparsity, and multi-task learning have recently received considerable attention. In this paper, we show how different MKL algorithms can be understood as applications of either regularization on the kernel weights or block-norm-based regularization, which is more common in structured sparsity and multi-task learning. We show that these two regularization strategies can be systematically mapped to each other through a concave conjugate operation. When the kernel-weight-based regularizer is separable into components, we can naturally consider a generative probabilistic model behind MKL. Based on this model, we propose learning algorithms for the kernel weights through the maximization of marginal likelihood. We show through numerical experiments that 2\ell_2-norm MKL and Elastic-net MKL achieve comparable accuracy to uniform kernel combination. Although uniform kernel combination might be preferable from its simplicity, 2\ell_2-norm MKL and Elastic-net MKL can learn the usefulness of the information sources represented as kernels. In particular, Elastic-net MKL achieves sparsity in the kernel weights.

Keywords

Cite

@article{arxiv.1011.3090,
  title  = {Regularization Strategies and Empirical Bayesian Learning for MKL},
  author = {Ryota Tomioka and Taiji Suzuki},
  journal= {arXiv preprint arXiv:1011.3090},
  year   = {2011}
}

Comments

19pages, 6 figures

R2 v1 2026-06-21T16:43:16.781Z