Adaptive Parametric Prototype Learning for Cross-Domain Few-Shot Classification
Abstract
Cross-domain few-shot classification induces a much more challenging problem than its in-domain counterpart due to the existence of domain shifts between the training and test tasks. In this paper, we develop a novel Adaptive Parametric Prototype Learning (APPL) method under the meta-learning convention for cross-domain few-shot classification. Different from existing prototypical few-shot methods that use the averages of support instances to calculate the class prototypes, we propose to learn class prototypes from the concatenated features of the support set in a parametric fashion and meta-learn the model by enforcing prototype-based regularization on the query set. In addition, we fine-tune the model in the target domain in a transductive manner using a weighted-moving-average self-training approach on the query instances. We conduct experiments on multiple cross-domain few-shot benchmark datasets. The empirical results demonstrate that APPL yields superior performance to many state-of-the-art cross-domain few-shot learning methods.
Cite
Text
Heidari et al. "Adaptive Parametric Prototype Learning for Cross-Domain Few-Shot Classification." Artificial Intelligence and Statistics, 2024.Markdown
[Heidari et al. "Adaptive Parametric Prototype Learning for Cross-Domain Few-Shot Classification." Artificial Intelligence and Statistics, 2024.](https://mlanthology.org/aistats/2024/heidari2024aistats-adaptive/)BibTeX
@inproceedings{heidari2024aistats-adaptive,
title = {{Adaptive Parametric Prototype Learning for Cross-Domain Few-Shot Classification}},
author = {Heidari, Marzi and Alchihabi, Abdullah and En, Qing and Guo, Yuhong},
booktitle = {Artificial Intelligence and Statistics},
year = {2024},
pages = {1369-1377},
volume = {238},
url = {https://mlanthology.org/aistats/2024/heidari2024aistats-adaptive/}
}