On the Relationship between Data Efficiency and Error for Uncertainty Sampling
Machine Learning
2018-06-19 v1 Machine Learning
Abstract
While active learning offers potential cost savings, the actual data efficiency---the reduction in amount of labeled data needed to obtain the same error rate---observed in practice is mixed. This paper poses a basic question: when is active learning actually helpful? We provide an answer for logistic regression with the popular active learning algorithm, uncertainty sampling. Empirically, on 21 datasets from OpenML, we find a strong inverse correlation between data efficiency and the error rate of the final classifier. Theoretically, we show that for a variant of uncertainty sampling, the asymptotic data efficiency is within a constant factor of the inverse error rate of the limiting classifier.
Cite
@article{arxiv.1806.06123,
title = {On the Relationship between Data Efficiency and Error for Uncertainty Sampling},
author = {Stephen Mussmann and Percy Liang},
journal= {arXiv preprint arXiv:1806.06123},
year = {2018}
}