The paper studies the problem of learning an adversarially robust predictor in the semi-supervised PAC model. The key findings are:
In the simple case where the support of the marginal distribution is known, the labeled sample complexity is Θ(VCU(H)/ε + log(1/δ)/ε).
In the general semi-supervised setting, the authors present a generic algorithm (GRASS) that can be applied to both realizable and agnostic settings.
For the realizable case:
For the agnostic case:
The results demonstrate that there can be a significant benefit in semi-supervised robust learning compared to the supervised setting, with the labeled sample complexity being controlled by the VCU dimension rather than the RSU dimension.
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by Idan Attias,... о arxiv.org 05-07-2024
https://arxiv.org/pdf/2202.05420.pdfГлибші Запити