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On Measuring the Intrinsic Few-Shot Hardness of Datasets

Authors :
Zhao, Xinran
Murty, Shikhar
Manning, Christopher D.
Publication Year :
2022

Abstract

While advances in pre-training have led to dramatic improvements in few-shot learning of NLP tasks, there is limited understanding of what drives successful few-shot adaptation in datasets. In particular, given a new dataset and a pre-trained model, what properties of the dataset make it \emph{few-shot learnable} and are these properties independent of the specific adaptation techniques used? We consider an extensive set of recent few-shot learning methods, and show that their performance across a large number of datasets is highly correlated, showing that few-shot hardness may be intrinsic to datasets, for a given pre-trained model. To estimate intrinsic few-shot hardness, we then propose a simple and lightweight metric called "Spread" that captures the intuition that few-shot learning is made possible by exploiting feature-space invariances between training and test samples. Our metric better accounts for few-shot hardness compared to existing notions of hardness, and is ~8-100x faster to compute.<br />Comment: EMNLP 2022 camera ready version

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2211.09113
Document Type :
Working Paper