Skip to content

Latest commit

 

History

History
52 lines (52 loc) · 2.13 KB

2024-06-30-gourdeau24a.md

File metadata and controls

52 lines (52 loc) · 2.13 KB
title section abstract layout series publisher issn id month tex_title firstpage lastpage page order cycles bibtex_author author date address container-title volume genre issued pdf extras
On the Computability of Robust PAC Learning
Original Papers
We initiate the study of computability requirements for adversarially robust learning. Adversarially robust PAC-type learnability is by now an established field of research. However, the effects of computability requirements in PAC-type frameworks are only just starting to emerge. We introduce the problem of robust computable PAC (robust CPAC) learning and provide some simple sufficient conditions for this. We then show that learnability in this setup is not implied by the combination of its components: classes that are both CPAC and robustly PAC learnable are not necessarily robustly CPAC learnable. Furthermore, we show that the novel framework exhibits some surprising effects: for robust CPAC learnability it is not required that the robust loss is computably evaluable! Towards understanding characterizing properties, we introduce a novel dimension, the computable robust shattering dimension. We prove that its finiteness is necessary, but not sufficient for robust CPAC learnability. This might yield novel insights for the corresponding phenomenon in the context of robust PAC learnability, where insufficiency of the robust shattering dimension for learnability has been conjectured, but so far a resolution has remained elusive.
inproceedings
Proceedings of Machine Learning Research
PMLR
2640-3498
gourdeau24a
0
On the Computability of Robust PAC Learning
2092
2121
2092-2121
2092
false
Gourdeau, Pascale and Tosca, Lechner. and Urner, Ruth
given family
Pascale
Gourdeau
given family
Lechner.
Tosca
given family
Ruth
Urner
2024-06-30
Proceedings of Thirty Seventh Conference on Learning Theory
247
inproceedings
date-parts
2024
6
30