Provably Unlearnable Data Examples
Derui Wang, Minhui Xue, Bo Li, Seyit Camtepe, Liming Zhu

TL;DR
This paper introduces a certification framework for unlearnable data examples, improving robustness guarantees and designing provably unlearnable examples to enhance data privacy protections against unauthorized models.
Contribution
It proposes a novel certification mechanism for dataset unlearnability using parametric smoothing, addressing robustness and verification issues in existing methods.
Findings
Improved tightness of certified $(q, \, \eta)$-Learnability.
Designed Provably Unlearnable Examples with reduced learnability.
Enhanced robustness guarantees for unlearnable datasets.
Abstract
The exploitation of publicly accessible data has led to escalating concerns regarding data privacy and intellectual property (IP) breaches in the age of artificial intelligence. To safeguard both data privacy and IP-related domain knowledge, efforts have been undertaken to render shared data unlearnable for unauthorized models in the wild. Existing methods apply empirically optimized perturbations to the data in the hope of disrupting the correlation between the inputs and the corresponding labels such that the data samples are converted into Unlearnable Examples (UEs). Nevertheless, the absence of mechanisms to verify the robustness of UEs against uncertainty in unauthorized models and their training procedures engenders several under-explored challenges. First, it is hard to quantify the unlearnability of UEs against unauthorized adversaries from different runs of training, leaving…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning · Privacy-Preserving Technologies in Data · Advanced Malware Detection Techniques
