Understanding Dataset Difficulty with $\mathcal{V}$-Usable Information
Abstract
Estimating the difficulty of a dataset typically involves comparing state-of-the-art models to humans; the bigger the performance gap, the harder the dataset is said to be. However, this comparison provides little understanding of how difficult each instance in a given distribution is, or what attributes make the dataset difficult for a given model. To address these questions, we frame dataset difficulty -- w.r.t. a model -- as the lack of - (Xu et al., 2019), where a lower value indicates a more difficult dataset for . We further introduce \textit{pointwise \mathcal{V}-information} (PVI) for measuring the difficulty of individual instances w.r.t. a given distribution. While standard evaluation metrics typically only compare different models for the same dataset, - and PVI also permit the converse: for a given model , we can compare different datasets, as well as different instances/slices of the same dataset. Furthermore, our framework allows for the interpretability of different input attributes via transformations of the input, which we use to discover annotation artefacts in widely-used NLP benchmarks.
Cite
@article{arxiv.2110.08420,
title = {Understanding Dataset Difficulty with $\mathcal{V}$-Usable Information},
author = {Kawin Ethayarajh and Yejin Choi and Swabha Swayamdipta},
journal= {arXiv preprint arXiv:2110.08420},
year = {2025}
}
Comments
ICML 2022 (Outstanding Paper)