Curriculum Meta-Learning for Few-Shot Classification

Abstract

We propose an adaptation of the curriculum training framework, applicable to state-of-the-art meta learning techniques for few-shot classification. Curriculum-based training popularly attempts to mimic human learning by progressively increasing the training complexity to enable incremental concept learning. As the meta-learner's goal is learning how to learn from as few samples as possible, the exact number of those samples (i.e. the size of the support set) arises as a natural proxy of a given task's difficulty. We define a simple yet novel curriculum schedule that begins with a larger support size and progressively reduces it throughout training to eventually match the desired shot-size of the test setup. This proposed method boosts the learning efficiency as well as the generalization capability. Our experiments with the MAML algorithm on two few-shot image classification tasks show significant gains with the curriculum training framework. Ablation studies corroborate the independence of our proposed method from the model architecture as well as the meta-learning hyperparameters.

Cite

Text

Stergiadis et al. "Curriculum Meta-Learning for Few-Shot Classification." NeurIPS 2021 Workshops: MetaLearn, 2021.

Markdown

[Stergiadis et al. "Curriculum Meta-Learning for Few-Shot Classification." NeurIPS 2021 Workshops: MetaLearn, 2021.](https://mlanthology.org/neuripsw/2021/stergiadis2021neuripsw-curriculum/)

BibTeX

@inproceedings{stergiadis2021neuripsw-curriculum,
  title     = {{Curriculum Meta-Learning for Few-Shot Classification}},
  author    = {Stergiadis, Emmanouil and Agrawal, Priyanka and Squire, Oliver},
  booktitle = {NeurIPS 2021 Workshops: MetaLearn},
  year      = {2021},
  url       = {https://mlanthology.org/neuripsw/2021/stergiadis2021neuripsw-curriculum/}
}