A Note on "Assessing Generalization of SGD via Disagreement"
Abstract
Several recent works find empirically that the average test error of deep neural networks can be estimated via the prediction disagreement of models, which does not require labels. In particular, Jiang et al. (2022) show for the disagreement between two separately trained networks that this `Generalization Disagreement Equality' follows from the well-calibrated nature of deep ensembles under the notion of a proposed `class-aggregated calibration.' In this reproduction, we show that the suggested theory might be impractical because a deep ensemble's calibration can deteriorate as prediction disagreement increases, which is precisely when the coupling of test error and disagreement is of interest, while labels are needed to estimate the calibration on new datasets. Further, we simplify the theoretical statements and proofs, showing them to be straightforward within a probabilistic context, unlike the original hypothesis space view employed by Jiang et al. (2022).
Cite
Text
Kirsch and Gal. "A Note on "Assessing Generalization of SGD via Disagreement"." Transactions on Machine Learning Research, 2022.Markdown
[Kirsch and Gal. "A Note on "Assessing Generalization of SGD via Disagreement"." Transactions on Machine Learning Research, 2022.](https://mlanthology.org/tmlr/2022/kirsch2022tmlr-note/)BibTeX
@article{kirsch2022tmlr-note,
title = {{A Note on "Assessing Generalization of SGD via Disagreement"}},
author = {Kirsch, Andreas and Gal, Yarin},
journal = {Transactions on Machine Learning Research},
year = {2022},
url = {https://mlanthology.org/tmlr/2022/kirsch2022tmlr-note/}
}