过度自信效应
推论
计算机安全
计算机科学
人工智能
心理学
社会心理学
作者
Zitao Chen,Karthik Pattabiraman
标识
DOI:10.14722/ndss.2024.23014
摘要
Machine learning (ML) models are vulnerable to membership inference attacks (MIAs), which determine whether a given input is used for training the target model.While there have been many efforts to mitigate MIAs, they often suffer from limited privacy protection, large accuracy drop, and/or requiring additional data that may be difficult to acquire.This work proposes a defense technique, HAMP that can achieve both strong membership privacy and high accuracy, without requiring extra data.To mitigate MIAs in different forms, we observe that they can be unified as they all exploit the ML model's overconfidence in predicting training samples through different proxies.This motivates our design to enforce less confident prediction by the model, hence forcing the model to behave similarly on the training and testing samples.HAMP consists of a novel training framework with high-entropy soft labels and an entropy-based regularizer to constrain the model's prediction while still achieving high accuracy.To further reduce privacy risk, HAMP uniformly modifies all the prediction outputs to become low-confidence outputs while preserving the accuracy, which effectively obscures the differences between the prediction on members and non-members.We conduct extensive evaluation on five benchmark datasets, and show that HAMP provides consistently high accuracy and strong membership privacy.Our comparison with seven state-ofthe-art defenses shows that HAMP achieves a superior privacyutility trade off than those techniques 1 . High accuracy AND Strong privacy High accuracy AND Strong privacy
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