Meta-Learning with Differentiable Closed-Form Solvers
Abstract
Adapting deep networks to new concepts from a few examples is challenging, due to the high computational requirements of standard fine-tuning procedures. Most work on few-shot learning has thus focused on simple learning techniques for adaptation, such as nearest neighbours or gradient descent. Nonetheless, the machine learning literature contains a wealth of methods that learn non-deep models very efficiently. In this paper, we propose to use these fast convergent methods as the main adaptation mechanism for few-shot learning. The main idea is to teach a deep network to use standard machine learning tools, such as ridge regression, as part of its own internal model, enabling it to quickly adapt to novel data. This requires back-propagating errors through the solver steps. While normally the cost of the matrix operations involved in such a process would be significant, by using the Woodbury identity we can make the small number of examples work to our advantage. We propose both closed-form and iterative solvers, based on ridge regression and logistic regression components. Our methods constitute a simple and novel approach to the problem of few-shot learning and achieve performance competitive with or superior to the state of the art on three benchmarks.
Cite
Text
Bertinetto et al. "Meta-Learning with Differentiable Closed-Form Solvers." International Conference on Learning Representations, 2019.Markdown
[Bertinetto et al. "Meta-Learning with Differentiable Closed-Form Solvers." International Conference on Learning Representations, 2019.](https://mlanthology.org/iclr/2019/bertinetto2019iclr-metalearning/)BibTeX
@inproceedings{bertinetto2019iclr-metalearning,
title = {{Meta-Learning with Differentiable Closed-Form Solvers}},
author = {Bertinetto, Luca and Henriques, Joao F. and Torr, Philip and Vedaldi, Andrea},
booktitle = {International Conference on Learning Representations},
year = {2019},
url = {https://mlanthology.org/iclr/2019/bertinetto2019iclr-metalearning/}
}