Pre-trained Encoders in Self-Supervised Learning Improve Secure and Privacy-preserving Supervised Learning


연구 분야: Artificial Intelligence



학회: 2024 IEEE Security and Privacy Workshops (SPW)


초록

Classifiers in supervised learning have various security and privacy issues, e.g., 1) data poisoning attacks, backdoor attacks, and adversarial exampleson the security side as well as 2) inference attacksto the training data on the privacy side. Various secure and privacy-preserving supervised learning algorithms with formal guarantees have been proposed to address these issues. However, they suffer from various limitations such as accuracy loss, small certified security guarantees, and/or inefficiency. Self-supervised learning pre-trains encoders using unlabeled data. Given a pre-trained encoder as a feature extractor, supervised learning can train a simple yet accurate classifier using a small amount of labeled training data. In this work, we perform the first systematic, principled measurement study to understand whether and when a pre-trained encoder can address the limitations of secure or privacy-preserving supervised learning algorithms. Our key findings are that a pre-trained encoder substantially improves 1) both accuracy under no attacks and certified security guarantees against data poisoning and backdoor attacks of state-of-the-art secure learning algorithms (i.e., bagging and KNN), 2) certified security guarantees of randomized smoothing against adversarial examples without sacrificing its accuracy under no attacks, 3) accuracy of differentially private classifiers.


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Hongbin Liu

Duke University

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Wenjie Qu

National University of Singapore

Singapore
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Jinyuan Jia

Penn State University

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발행 연도 2024년
인용수 1
출판 국가 Singapore
사이트 IEEE
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