Certifying ensembles: a general certification theory with s-lipschitzness
Improving and guaranteeing the robustness of deep learning models has been a topic of intense research. Ensembling, which combines several classifiers to provide a better model, has shown to be beneficial for generalisation, uncertainty estimation, calibration, and mitigating the effects of concept...
Main Authors: | Petrov, A, Eiras, F, Sanyal, A, Torr, PHS, Bibi, A |
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Format: | Conference item |
Language: | English |
Published: |
Journal of Machine Learning Research
2023
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