English

Defining Benchmarks for Continual Few-Shot Learning

Computer Vision and Pattern Recognition 2020-04-28 v1 Machine Learning Machine Learning

Abstract

Both few-shot and continual learning have seen substantial progress in the last years due to the introduction of proper benchmarks. That being said, the field has still to frame a suite of benchmarks for the highly desirable setting of continual few-shot learning, where the learner is presented a number of few-shot tasks, one after the other, and then asked to perform well on a validation set stemming from all previously seen tasks. Continual few-shot learning has a small computational footprint and is thus an excellent setting for efficient investigation and experimentation. In this paper we first define a theoretical framework for continual few-shot learning, taking into account recent literature, then we propose a range of flexible benchmarks that unify the evaluation criteria and allows exploring the problem from multiple perspectives. As part of the benchmark, we introduce a compact variant of ImageNet, called SlimageNet64, which retains all original 1000 classes but only contains 200 instances of each one (a total of 200K data-points) downscaled to 64 x 64 pixels. We provide baselines for the proposed benchmarks using a number of popular few-shot learning algorithms, as a result, exposing previously unknown strengths and weaknesses of those algorithms in continual and data-limited settings.

Keywords

Cite

@article{arxiv.2004.11967,
  title  = {Defining Benchmarks for Continual Few-Shot Learning},
  author = {Antreas Antoniou and Massimiliano Patacchiola and Mateusz Ochal and Amos Storkey},
  journal= {arXiv preprint arXiv:2004.11967},
  year   = {2020}
}
R2 v1 2026-06-23T15:05:13.160Z