Feature Extractor Stacking for Cross-Domain Few-Shot Learning
Abstract
Cross-domain few-shot learning (CDFSL) addresses learning problems where knowledge needs to be transferred from one or more source domains into an instance-scarce target domain with an explicitly different distribution. Recently published CDFSL methods generally construct a universal model that combines knowledge of multiple source domains into one feature extractor. This enables efficient inference but necessitates re-computation of the extractor whenever a new source domain is added. Some of these methods are also incompatible with heterogeneous source domain extractor architectures. We propose feature extractor stacking (FES), a new CDFSL method for combining information from a collection of extractors, that can utilise heterogeneous pretrained extractors out of the box and does not maintain a universal model that needs to be re-computed when its extractor collection is updated. We present the basic FES algorithm, which is inspired by the classic stacked generalisation approach, and also introduce two variants: convolutional FES (ConFES) and regularised FES (ReFES). Given a target-domain task, these algorithms fine-tune each extractor independently, use cross-validation to extract training data for stacked generalisation from the support set, and learn a simple linear stacking classifier from this data. We evaluate our FES methods on the well-known Meta-Dataset benchmark, targeting image classification with convolutional neural networks, and show that they can achieve state-of-the-art performance.
Cite
Text
Wang et al. "Feature Extractor Stacking for Cross-Domain Few-Shot Learning." Machine Learning, 2024. doi:10.1007/S10994-023-06483-XMarkdown
[Wang et al. "Feature Extractor Stacking for Cross-Domain Few-Shot Learning." Machine Learning, 2024.](https://mlanthology.org/mlj/2024/wang2024mlj-feature/) doi:10.1007/S10994-023-06483-XBibTeX
@article{wang2024mlj-feature,
title = {{Feature Extractor Stacking for Cross-Domain Few-Shot Learning}},
author = {Wang, Hongyu and Frank, Eibe and Pfahringer, Bernhard and Mayo, Michael and Holmes, Geoff},
journal = {Machine Learning},
year = {2024},
pages = {121-158},
doi = {10.1007/S10994-023-06483-X},
volume = {113},
url = {https://mlanthology.org/mlj/2024/wang2024mlj-feature/}
}