Information Theoretic Meta Learning with Gaussian Processes
Abstract
We formulate meta learning using information theoretic concepts; namely, mutual information and the information bottleneck. The idea is to learn a stochastic representation or encoding of the task description, given by a training set, that is highly informative about predicting the validation set. By making use of variational approximations to the mutual information, we derive a general and tractable framework for meta learning. This framework unifies existing gradient-based algorithms and also allows us to derive new algorithms. In particular, we develop a memory-based algorithm that uses Gaussian processes to obtain non-parametric encoding representations. We demonstrate our method on a few-shot regression problem and on four few-shot classification problems, obtaining competitive accuracy when compared to existing baselines.
Cite
@article{arxiv.2009.03228,
title = {Information Theoretic Meta Learning with Gaussian Processes},
author = {Michalis K. Titsias and Francisco J. R. Ruiz and Sotirios Nikoloutsopoulos and Alexandre Galashov},
journal= {arXiv preprint arXiv:2009.03228},
year = {2021}
}
Comments
15 pages, 2 figures