差分隐私和数据偏度对隶属推理漏洞的影响

Stacey Truex, Ling Liu, M. E. Gursoy, Wenqi Wei, Lei Yu
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引用次数: 31

摘要

成员推理攻击试图推断私人训练模型的单个训练实例的成员关系。本文提出了一个会员隐私分析与评价系统MPLens,该系统有三个独特的贡献。首先,通过MPLens,我们展示了如何在对抗性机器学习中利用成员推理攻击方法。其次,我们使用MPLens强调了预先训练模型在成员推理攻击下的脆弱性在所有类别中是如何不均匀的,特别是当训练数据倾斜时。我们表明,当模型使用倾斜的训练数据时,成员推理攻击的风险通常会增加。最后,我们研究了差分隐私作为一种对抗成员推理攻击的缓解技术的有效性。我们讨论了在模型复杂性、学习任务复杂性、数据集复杂性和隐私参数设置方面实现这种缓解策略的权衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Effects of Differential Privacy and Data Skewness on Membership Inference Vulnerability
Membership inference attacks seek to infer the membership of individual training instances of a privately trained model. This paper presents a membership privacy analysis and evaluation system, MPLens, with three unique contributions. First, through MPLens, we demonstrate how membership inference attack methods can be leveraged in adversarial ML. Second, we highlight with MPLens how the vulnerability of pre-trained models under membership inference attack is not uniform across all classes, particularly when the training data is skewed. We show that risk from membership inference attacks is routinely increased when models use skewed training data. Finally, we investigate the effectiveness of differential privacy as a mitigation technique against membership inference attacks. We discuss the trade-offs of implementing such a mitigation strategy with respect to the model complexity, the learning task complexity, the dataset complexity and the privacy parameter settings.
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