Generalized Matrix Means for Semi-Supervised Learning with Multilayer Graphs
Machine Learning
2019-10-31 v1 Numerical Analysis
Numerical Analysis
Machine Learning
Abstract
We study the task of semi-supervised learning on multilayer graphs by taking into account both labeled and unlabeled observations together with the information encoded by each individual graph layer. We propose a regularizer based on the generalized matrix mean, which is a one-parameter family of matrix means that includes the arithmetic, geometric and harmonic means as particular cases. We analyze it in expectation under a Multilayer Stochastic Block Model and verify numerically that it outperforms state of the art methods. Moreover, we introduce a matrix-free numerical scheme based on contour integral quadratures and Krylov subspace solvers that scales to large sparse multilayer graphs.
Cite
@article{arxiv.1910.13951,
title = {Generalized Matrix Means for Semi-Supervised Learning with Multilayer Graphs},
author = {Pedro Mercado and Francesco Tudisco and Matthias Hein},
journal= {arXiv preprint arXiv:1910.13951},
year = {2019}
}
Comments
Accepted in NeurIPS 2019