We propose a meta-learning algorithm utilizing a linear transformer that carries out null-space projection of neural network outputs. The main idea is to construct an alternative classification space such that the error signals during few-shot learning are quickly zero-forced on that space so that reliable classification on low data is possible. The final decision on a query is obtained utilizing a null-space-projected distance measure between the network output and reference vectors, both of which have been trained in the initial learning phase. Among the known methods with a given model size, our meta-learner achieves the best or near-best image classification accuracies with Omniglot and miniImageNet datasets.
@article{arxiv.1806.01010,
title = {Meta-Learner with Linear Nulling},
author = {Sung Whan Yoon and Jun Seo and Jaekyun Moon},
journal= {arXiv preprint arXiv:1806.01010},
year = {2018}
}
Comments
presented at 2018 NeurIPS (NIPS) Workshop on Meta-Learning (Montreal, Canada)