title | abstract | layout | series | publisher | issn | id | month | tex_title | firstpage | lastpage | page | order | cycles | bibtex_author | author | date | address | container-title | volume | genre | issued | extras | ||||||||||||||||||||||||||
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Robust Learning under Strong Noise via SQs |
This work provides several new insights on the robustness of Kearns’ statistical query framework against challenging label-noise models. First, we build on a recent result by \cite{DBLP:journals/corr/abs-2006-04787} that showed noise tolerance of distribution-independently evolvable concept classes under Massart noise. Specifically, we extend their characterization to more general noise models, including the Tsybakov model which considerably generalizes the Massart condition by allowing the flipping probability to be arbitrarily close to |
inproceedings |
Proceedings of Machine Learning Research |
PMLR |
2640-3498 |
anagnostides21a |
0 |
Robust Learning under Strong Noise via SQs |
3808 |
3816 |
3808-3816 |
3808 |
false |
Anagnostides, Ioannis and Gouleakis, Themis and Marashian, Ali |
|
2021-03-18 |
Proceedings of The 24th International Conference on Artificial Intelligence and Statistics |
130 |
inproceedings |
|
|